{
 "cells": [
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Fall / Near-Fall / ADL Classification"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Making Training and Testing Dataset"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 2,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "(Rows, Columns) in training dataset (480, 136)\n",
      "Number of Features in training dataset:- 136\n",
      "Number of Features in testing dataset:- 136\n"
     ]
    }
   ],
   "source": [
    "from sklearn.cross_validation import train_test_split\n",
    "from sklearn.linear_model import LogisticRegression\n",
    "from sklearn.tree import DecisionTreeClassifier\n",
    "from sklearn.naive_bayes import GaussianNB\n",
    "from sklearn.svm import SVC\n",
    "from sklearn.ensemble import RandomForestClassifier,GradientBoostingClassifier,AdaBoostClassifier\n",
    "from sklearn.ensemble import VotingClassifier\n",
    "from sklearn import ensemble\n",
    "import xgboost as xgb\n",
    "from sklearn.feature_selection import VarianceThreshold, RFE\n",
    "from sklearn.metrics import accuracy_score, confusion_matrix\n",
    "import matplotlib.pyplot as plt\n",
    "%matplotlib inline\n",
    "import pandas as pd\n",
    "import numpy as np\n",
    "\n",
    "#Random values generated should be same everytime the program is run\n",
    "np.random.seed(7)\n",
    "\n",
    "#Reading of Training and Testing Data from CSV File\n",
    "data=pd.read_csv(\"Fall20Multi.csv\")\n",
    "train=data.iloc[0:480,:]\n",
    "test=data.iloc[480:,:]\n",
    "print(\"(Rows, Columns) in training dataset\",train.shape)\n",
    "print(\"Number of Features in training dataset:-\",train.shape[1])\n",
    "print(\"Number of Features in testing dataset:-\",test.shape[1])"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Feature Engineering\n",
    "Replace NaN values with Minimum of that column"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 3,
   "metadata": {},
   "outputs": [
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "/home/inderpreet/anaconda3/lib/python3.6/site-packages/ipykernel_launcher.py:5: SettingWithCopyWarning: \n",
      "A value is trying to be set on a copy of a slice from a DataFrame.\n",
      "Try using .loc[row_indexer,col_indexer] = value instead\n",
      "\n",
      "See the caveats in the documentation: http://pandas.pydata.org/pandas-docs/stable/indexing.html#indexing-view-versus-copy\n",
      "  \"\"\"\n",
      "/home/inderpreet/anaconda3/lib/python3.6/site-packages/ipykernel_launcher.py:9: SettingWithCopyWarning: \n",
      "A value is trying to be set on a copy of a slice from a DataFrame.\n",
      "Try using .loc[row_indexer,col_indexer] = value instead\n",
      "\n",
      "See the caveats in the documentation: http://pandas.pydata.org/pandas-docs/stable/indexing.html#indexing-view-versus-copy\n",
      "  if __name__ == '__main__':\n"
     ]
    }
   ],
   "source": [
    "#Transforming Columns containg \"NaN\" Values\n",
    "#in both training and testing dataset\n",
    "for col in train.columns:\n",
    "    val = train[col].min()\n",
    "    train[col]=train[col].fillna(value=val,axis=0)\n",
    "\n",
    "for col in test.columns:\n",
    "    val = test[col].min()\n",
    "    test[col]=test[col].fillna(value=val,axis=0)"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Make Train and Test Dataframes"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 4,
   "metadata": {
    "collapsed": true
   },
   "outputs": [],
   "source": [
    "#Separating training data Features and Predictions into different dataframes\n",
    "X_train=train.drop('class_label',axis=1)\n",
    "Y_train=train['class_label']\n",
    "\n",
    "#Separating testing data Features and Predictions into different dataframes\n",
    "X_test=test.drop('class_label',axis=1)\n",
    "Y_test=test['class_label']"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Feature Exploration"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 5,
   "metadata": {},
   "outputs": [
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "/home/inderpreet/anaconda3/lib/python3.6/site-packages/pandas/plotting/_core.py:179: UserWarning: 'colors' is being deprecated. Please use 'color'instead of 'colors'\n",
      "  warnings.warn((\"'colors' is being deprecated. Please use 'color'\"\n"
     ]
    },
    {
     "data": {
      "text/plain": [
       "<matplotlib.axes._subplots.AxesSubplot at 0x7f83e58ada20>"
      ]
     },
     "execution_count": 5,
     "metadata": {},
     "output_type": "execute_result"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAXoAAAD4CAYAAADiry33AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nkpoz9JLUnKGXpOb+Dz3aviltvsQ0AAAAAElFTkSuQmCC\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f83e58e8898>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "data.class_label.value_counts().plot(kind='bar',colors='RGC')"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Fall Categories"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 6,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "<matplotlib.axes._subplots.AxesSubplot at 0x7f83e58e8ba8>"
      ]
     },
     "execution_count": 6,
     "metadata": {},
     "output_type": "execute_result"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAW4AAADuCAYAAAAZZe3jAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nuI0xxmOscBtjjMdY4TbGGI/5/wk/Ux0pLKSDAAAAAElFTkSuQmCC\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f83bf4abeb8>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "fall_data=pd.read_csv(\"multiclassfall.csv\")\n",
    "fall_data.CategoryID.value_counts().plot(kind='pie')"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Near Fall Categories"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 7,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "<matplotlib.axes._subplots.AxesSubplot at 0x7f83bbb00438>"
      ]
     },
     "execution_count": 7,
     "metadata": {},
     "output_type": "execute_result"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAX8AAADuCAYAAADRCQc1AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nWfE3xpgAsuJvjDEBZMXfGGMC6P8AJ+qW82ScjeMAAAAASUVORK5CYII=\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f83bf3a6ef0>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "near_fall_data=pd.read_csv(\"MultiNear.csv\")\n",
    "near_fall_data.CategoryID.value_counts().plot(kind='pie')"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Activities of Daily Life (ADL) Categories"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 8,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "<matplotlib.axes._subplots.AxesSubplot at 0x7f83bbabec88>"
      ]
     },
     "execution_count": 8,
     "metadata": {},
     "output_type": "execute_result"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAc4AAADuCAYAAACwPecyAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f83bbb17048>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "near_fall_data=pd.read_csv(\"ADLMulti.csv\")\n",
    "near_fall_data.CategoryID.value_counts().plot(kind='pie')"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Acceleration Analysis (Waistometer)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 9,
   "metadata": {},
   "outputs": [
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "/home/inderpreet/anaconda3/lib/python3.6/site-packages/pandas/plotting/_core.py:179: UserWarning: 'colors' is being deprecated. Please use 'color'instead of 'colors'\n",
      "  warnings.warn((\"'colors' is being deprecated. Please use 'color'\"\n"
     ]
    },
    {
     "data": {
      "text/plain": [
       "<matplotlib.axes._subplots.AxesSubplot at 0x7f83bf3e6c18>"
      ]
     },
     "execution_count": 9,
     "metadata": {},
     "output_type": "execute_result"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAXwAAAD8CAYAAAB0IB+mAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz\nAAALEgAACxIB0t1+/AAAADl0RVh0U29mdHdhcmUAbWF0cGxvdGxpYiB2ZXJzaW9uIDIuMS4wLCBo\ndHRwOi8vbWF0cGxvdGxpYi5vcmcvpW3flQAAIABJREFUeJzsnXeYFFXWh9/qNDnPkBmGnEGiJBMY\nQFwxghnzmneNmMMq67qurvqZwIRZUTEBBhREckZwyJkBhkkweTre749TPd09AWYIC0Pf93n66e6q\nW6Gru3/31LnnnmMopdBoNBrNiY/lWJ+ARqPRaP43aMHXaDSaMEELvkaj0YQJWvA1Go0mTNCCr9Fo\nNGGCFnyNRqMJE7TgazQaTZigBV+j0WjCBC34Go1GEybYjvUJBJOamqoyMjKO9WloNBpNg2LZsmV5\nSqm0g7U7rgQ/IyODpUuXHuvT0Gg0mgaFYRjb69JOu3Q0Go0mTNCCr9FoNGGCFnyNRqMJE7TgazQa\nTZigBV+j0WjCBC34Go1GEyZowddoNJowQQu+JrzYtUweGk0YclxNvNJojjpvDZXnJwuP7XloNMcA\nbeFrNBpNmKAFXxM2rNlddKxPQaM5pmjB14QNXy3PCrzx+Y7diWg0x4jDFnzDMFoahjHLMIy1hmFk\nGobxN3N5smEYMwzD2Gg+Jx3+6Wo0h45SQW/cZcfsPDSaY8WRsPA9wL1Kqc7AAOB2wzC6AA8Cvyql\n2gO/mu81mmOGIkjxXSXH7kQ0mmPEYQu+UmqPUmq5+boYWAs0B0YB75vN3gcuONxjaTSHQ4iF7yo9\nZueh0RwrjqgP3zCMDKAXsAhorJTaA9IpAI1q2eZmwzCWGoaxNDc390iejkZTO9rC14QhR0zwDcOI\nBb4C/q6UqnM4hFJqolKqr1Kqb1raQQu2aDSHxPrsYibN3xZY4NSCrwk/jojgG4ZhR8T+Y6XUFHPx\nXsMwmprrmwI5R+JYGs2hMGt9lZ+fdulowpAjEaVjAO8Aa5VSLwat+g4Ya74eC3x7uMfSaA4Vl6dK\nGKZ26WjCkCORWmEwcDWw2jCMleayh4F/AZMNw7gB2AFcegSOpdGE4PH6sFkPbrd4fTJi61MGFkNp\nwdeEJYct+EqpuYBRy+phh7t/jeZAnP6f3+iXkcx/x5x0wHbKDNGpwEE0Tu3D14QleqatpkGTta+c\nr1fsOmg7ryn4bqyywFNxNE9Lozku0YKvabD43TR1wd/U4xd8r+sonJFGc3yjBV/TYHF7654Px1e1\nc9AWviYM0YKvabA4q0beHACX2TlYMbfxaAtfE35owdc0WKqFWh4Af+dg8Qu+13k0TkmjOa7Rgq9p\nsLjq4dJxuqta+Nqlowk/tOBrGiz1s/C9gHbpaMIbLfiaBsuhuHQMf4pkbeFrwhAt+JoGS32idPyC\nX2nh67BMTRiiBV/TYKlPlI7TLS4dm6F9+JrwRQu+psFSX5eOQVD7Wnz4eSVOBvzzV37KzD7c09No\njju04GsaLPWK0vH4Au4cqDUsc312MdlFFXy0cDsAhWXuyjw8Gk1DRwu+psFS3ygdS3BNW0/Ngl9c\n4QFkfGBnQRk9//EzL/+6MdBAKfB5D+l8NQ0YnxeWvgul+cf6TA4LLfiaBku9BN/tY0TXQEW1Hbn7\nuPPTFdXaFVe4AbBZLCzfsQ+Ar5ZnBRrMfBqeb6fDOsONzbNg6t3y/fvZsRC2zD5253QIaMHXNFjq\nG6UTbQtk8bZ4nXz/x+5q7YpMC99iMcgtlrsAqxGU/XvOC1BeAHkbDvGsNQ2KRRPh61tg11J5vzvI\nSHj3HPjgfCjNOzbnVrAVdi6u1yZa8DUNlvq6dKLsgfcORNiXbS8IaVdULha+AZQ6xXXjDfbhG5Jt\nc9d2LfgnPDsXww/3wx+fwu//kWV7VsKiCVAYlJJ76bvH5vy+GAvvnAUbfqrzJlrwNQ0W52FY+BGI\nS8Zv0fspccr7CreXMre8LncFfPYqKhmAd6Y2rFv5Y0bRbph2H5QVHLzt0cDnk3GXmtj6O7x3rvjl\nve7q63cuCtpP0PofHoD/dpHXEfGw5hhUb60ohD1/yOvp99d5My34mgZLXS18pRQuj49Is76b2xJR\naeH7LXo/FWa8fqnLQ5lp4RcHdQpeWyQAKaqKgB1IWMKZha/Dkrfgz68Cy/Zth3kvg9dT+3Yg1/OX\np2D7gkM//ieXwsdVqqs6S0To3/8LbJ8HM/8B/2kP814JbbfnD4hvAZ3Pl/ddL4Rz/wNdL5L3rYbA\nkLth759QmEWN5G2sNUDgsMgyXUzdLob92+u8mRZ8TYOlroLvn6AVbQq+y4jEgRtQFFYTfGlb5vJS\n6vJUbu8/lnKVA5BEcWAjpeD5tvDjg4f6UU5civbIc+HOwLIpN8OMx2HzzANvm7cR5r4I7w2HN4eI\n+G/5DbbPh7XfiyvFZ/4GfD5pr5S89nqgeC9s+gU2zYDs1YH9bvhRhN7PsklQvk9cN8HkrIXGXSF9\ngLxv3BX63wSXvgdPFsJ106DjCFn34UXgKgtsW75PXEKv9oXv/y7LnMXw9a2wfyeHzc5FYFhg6KPg\niK3zZkeiiLlGc0wIHrT1+RQWS82llf2CH2mV9U4jghhDYcPLvlJ3lbZi1TvdvhBXTonTQ7LNgcVd\nCkCyEVQTtzBLBnIXvQkjngssL94LPg8kNJf3v/8HsldBv5sgrRPEBqKG5EN45U8cPEhcVgBZS6Dd\nWWBpgPaZX+jzN8vz6i9h50J5vWUWdDi75u2Ugg0/BN5nr5bH3Ber7D8LTr0ffn4UlrwNjjhwFUNM\nGnQ6L9Bu5Scw/Fl5veYbsEVB3+vlGAVboFFXsZSVkuuvlNyJZAyBXleB8kHva6qfZ1onec5bL24e\nwwIJLQLuFoA/PoEL35AO7o9PwF0Go9+v2/WrjR0LoXE3SG4Dt86DR1rXaTMt+JoGS7Dge5XCQm2C\nL8IdYf7anUQAMnCbta+sSlvZZ7nbS2mQ4BdXuEmOsmH1ioWfbBQFNiquMiu3NB9WfABzXgRnETxu\nun/8IX1rvoX0QXD9D2IJLpoAnUbCF9dCclu44vOA6E+9WwTqoregx+g6XZf/GZ+MAXsUXDqp9jYF\nW+Q5f5OI6Nz/ikhGJYu7x10OI/4NNkdgm3XTxBJ2FkJcM+j8Fxh0B1gjzE7AgPjmsOw9iZqa84Js\nZ3WA1S5+dXeFrI9OgZYnw6rP4cwnYdOvcndw6v1iHfe/STrh4mzxzZfmSUdcvk86jsR0iEyAQXfW\n/PkMA26ZCx+PlnQdZfnyCMYeI5/d/zvZOANeHwTKCyNfhIzB1feb+TWktIdGXap39O5yuXvoM1be\nJ2XUfv2roAVf02BxewM+c69PYbfW3M6fCz/SXO80RPDjbR5mrc9FKYVhCqzfh1/h9lLmDPiYiys8\nYpmZJFMcuKsozQkczOsRK3TBq4Fle1bK7XwwO+bDH5+J+KybCr+Z1mf+JnjtZDj7aWh9Kmz8WZZv\n/FkELa2TvFY+cMRIeOgZj0BUYs0f3usB61H4mxftFtcIwPDnIK5xYF1pPsSkQPl+KM0Vqzd/s1il\ne/+E814CV6lcg2XvQetTxBcNItTf/03EHqDXlSLMfvpcG3jd5nTInAJT74GTb4ahjwU6SlepiHz6\nQCjJgfXTYfZzsPwDaNwdTn1A2iW3lse6afK+cKcI/r5t8j6x1cGvRZPucO9aef393+UzXfmluJ/W\nTZV9lRUEBq7dpZCTKa8XvREq+D4f7F4unb+f0x6Ek/8K0cki9CV7wVMO7c48+LlVQQu+psESYuEf\noKC532qPMAW/3LTwT2sbz+frnewtctIkITKkrd/Cj42wUeL0mIIfGHxLMoopdXmIi7SLqPkpyYa1\n38nr2CbyfuUnsHaqWHqD7hDxXzYJvv5r9ZM94xGYNR4+GQ09xkgnY4+B1V/IoyaK90iUyfmvhrqJ\n5r0svvLoVLjkXbGKE5qLVe5HKRkAdJWIZdyijyx3lUHBZhGzmtg+P/B66+zA3UfWUnh7GJz1D4kT\nB+h4rgjf51eKy6X7JeJSSWgBPz4ES94JCP7qyXI9r/5azqHdsJqPD9KR9Rgtg6hVOzVHjLhsABp1\nFpeY/07g4rdD7ygAElrKc+FOaN47MBCaVAfBD+bsZ+S4TXtA+7PEJfTpZXKNyoMG+k9/GHYtg91/\nhG7/+78Dnb+f2f+CxROh+6WweIIss0XKvuuJFnxNgyVY8D3eAwm+6dIxBb/CtPC7N4nk8/VlfLJo\nO/ec3dFsaw7OKsX+MheN4yMoyfVIuKZL/Pc7fWk0N/LIKXeK4JcECf6qybB/h0Rz9L8JPrtSfMsA\nV34F7U2r7PSHZJAxthGgxKrvdhGc9gA06wUfXyIWaofh0KIvzHwmcIwOI6BlP1jwmrgP1n4vy2f/\nC066Apr3gRUfidgDlOXBZ1eIqLcdKmIKYk3/cL9YvSAuk3vWyt3CJ6Nh2xxo0gMu+wQSW4Ze1O3z\npCMyDNg2NyD4881Il1//IeMXKe3gtHEi+GX5cPE7EBEnbbpeID74nx+Rz9DpPHFvNe4Obc4IHcs4\nEHW5g+l9jQzeArSqwYWS0EKe/dE29bHwg4mIFbH3k2T61r+8TjpekKifvtdJp7PxJ7kT8t+hrZ8u\nz0Mfk2tvc0jHufSdgNj7P0Nwx11HtOBrGizBLh3fAUIiAxa+tKlQYt11TYsEyvhzd8Af73R7+cLx\nJFkqjXGld9I6NYnNuaWScsEU/M2qGS0tuSR8cTH0vSrUpfPrU/Lc8mR5vuRd+OkRiGsSEHuAyCBr\nGuDvq8XCBrEMz3paBin/8rL4mIPpcr4I+yn3wuRrAnHgS96Wx+gP4dvbRRQunSSRKt/cKm02zxTL\n2V0uncDOhWJdp7SXDmPGY+I62jZH2mevErEyrCLAkYkiVht+EpeT1QaZ30ikSO462X9cMyg2ZzFf\nOknuEq74Qvzi3S8J/SwDbhVf/qIJcn33/imfua5iX1c6DIfUDtB2mPj5qxKVJB2YX/DzNsodWmT8\n4R03+A6hLA+a94UxH8r7xt3kOWcNtBok4x17/oAh98Cp9wW2a3O6dI6/PCnf26rP5e7vENCCr2mw\nVB20rQ2/D99hjn35XTqxNg/DOjViT2EgN77X7aSfZQP92MDdFbfTKE7aFld4KsPuNqgWnM4fRO1e\nCN8txN1pFPb4FmLBesolQqSROTHHFgEj/3PwDxOTGvp+8F2B1+kD4NppYm2u+Cjg/gAY9DcZDGw7\nDH77pyybfLVYk1d/LcfvMUbcPuX7xQL/+REpAJO1OHQw2OeBOea5Dv47nPUU/DBOoo+C8UfPnPdf\ncRNlLYOFr8mylHZw/U/w1lDp5PyiVls0jsUKXS6Q7bfNAXu0uC6ONDYH3LGk9vWGIVb+vm2w6gtY\n+bF0aIeLPQpGvgDT7pX30cmBdY27yvPeTBlreKW3vG/Zv/p+opKkIwQ455/Vfy91RAu+psFSNSyz\nNvwuHYfp0ikzLXyb8pAU42DNnoCF73AHXqexn8YJbQBzBq5LQjE3quYh+9+1YwsZjVrDbfPFTYI6\n8gOlfn/tGQ+FLm/RB24wB3ZPvV8mEJXliUVok84Ki1XuBrweif7wpwI46arQyJ8zHhZhccQEBkfP\nfFJcTKkdYP0PsnzDj7LvDudIm7/9IdZ77lpxQ0Qnw20LxM9cF0t90B3SUZbmSefkiKn/9TkStOgr\nQu93q9Tk+jkU+t0olvvyD+T6+olrKu/nv2J+ZiURNwcbjD1EsQct+JoGjCfEpVN7u0qXjkUa+QXf\nrlwkRtnZVxbIfGnzlFa+XhJ5G2855uGwWXht1ib6DdxLf2CTL1Tw08o3Q9xICd+LTDjcj3XoWCwy\nG3TJW9C9hhBOqw1umiW+7C2/iZiHbG8V8Q3GHgU9L5PXzU0LtN8NoW1sDonSCY7UqY9oxzeTu4Vj\nzdnPyIxgT4W4gPrecPBt6krTnuaLoA7QMKQj3bko4HIb83HNLqcjRAOcyaHRCK7aXDoffQQ5Ab+6\nX/D9Lh2/4Ft9LmIjbVS4fXjMfUV4QsMnG3t3Ex9po8zl5dM5EnpXbE2gUEVXtolRZbijGvHRwu3k\nFB/j0olnPgljv4f0k2teH5sm/v+LJlaf+BXuRCfDDTPg6m9kLsSRvD4dRshg+sDbQ5dX7VQadT5y\nx6wBLfiahodSsHlzzS6dnBy4+mo444zKdf56ttVdOm5izdlYpRUueP98xioJqfy3WwbFEj35RJoB\n/tGGhGVGxcRzkesp7nIFrOEv8jN49Js/6T/+VyYvPQJT5w+ViNjD8j1vyilm497QTm/Fjn3sLAjM\nQSh3eaulpt6RX8aa3UUopdhXWnutgMzdhRSWu9meX3pAN9wxo2kPaHvGwdvVl4TmcNPM0AgegJ5j\n4DEzvXLzvnKXdRTRLh1Nw+ODD+Daazlv1M381kkSW1XG4e+ToiWsWVPZ3G/h2y3yXOK1gwVsykmc\nmVGtInsdCVtnM9L8v21VTQBI8O1HKXFVRCPWe0xsPKsLI8lSYgFm+lrxcGbAzTNh9mYu7dOicjLX\nkcbnU8zfnE+/1klE2A4sEKVOD1OWZ9EiOZre6UnERdj4YtlOpq3O5vyezfh25S4eGdkZm8Xgp8y9\nPP/TehxWC+Mv7Ibbq8gvcfLCjA1kpETz70t6MvH3zcxan0uHxnFMvXMI+8tcLNm2j3smr6TM5eXU\nDmnM2ZjLq5f3Jre4ggt6NSc2wsas9bkUlDoZ99VqImwWnB4fXZvFM+m6/qSZA+Nhi9UOd2fK7OOj\njBZ8TcNjkaStveTbiXwT0ZK5rXsFXDpFRdWaV3XplCgRGKvPTSq5PGj7BHfuxSHbbFVNAYjxFFTW\ntI1GLPyI6Fgc1v04vQ6eaDuZVfkGZLvpnZ7Ihb2a89i3mazLLqZdo1js1sO/ic4vkXh/h0329dXy\nLO7/chWj+7bgmoEZdGkaX5lHaNf+cr5buZtrB2XgsFl4/bdNvDZL8tjERdgY1asZHy3cAcDvG2T+\nwOPfZJK1r4zdZrSSy+vj/i9DQ0G35ZcxekIga+XaPUWc+u9Z7NpfHtLOv8/bP1kOwLId+wFCis34\nv49NOSX89cOlTLntCA2ONmT88wCOMlrwNQ2P3MBEp4z9e5hLr0Ch8cLCas39UTp2v+B77WAVH36v\n1U8yzPY7uVtCBxn3qGQqlJ0Y977KAeFoo4IKHEQ67MREWHGV+bAmtqRngmJF9jZ6pycxvFtTnvgu\nkxEvzyEtLoKZ954mk7NMlm3fx0u/bOD/Lu9FYnTobE+P18cz09YypF0qZ3aRu4qcogoGPzeTK/qn\n89SobpS7vLz0i9TYnbw0i8lLszi1Qxo3DGnNazM3YbUYLNiSz6T5Wyksd1Ph9jGwTQo3n9qG6yYt\n4aOFOzitQxpPj+rG50t3UOby8t68bQBYDHhwRCe+WraL9XuL+ceorjSJj6RXehLnvjKH3GInb17V\nhzM7N2LC71t4bdYmAMb0bcmI7k34aOF2flkbGDtJjXVUCv3l/dNxe32c3DqZbfmlXNYvnZ8ys3lm\n2lqe+PZPnhrVrc5ff335fUMuzRKjaNeoblklPV4fZW4v8ZFHb/D0WKEFX9Pw2LsXBg2C+fNJKRUL\nstKlHCz4ZubDQBy+mTYBv4XvwmKGT9qq5BQvIYo8EohxFVRO6oqlgjIiibJbKy33lFgHI7s3Ja/E\nybWDM0iLi6B3ehJLt+8jt9jJ/M35nNO1SeV+n/wuk9W7Cpm5LoeLeotVd9enK8gurOD6Ia2ZNH8b\nk+Zv49GRnblhSGt+W5+L26t4f4HMBp65bi+79pfzzwu7k1Ncwe795UxemlVpWVdeoiK5G2mWEMm9\nZ3egb0Yy5/dsxqz1OTw6sjPpKdHcf04nXB4fydEO4iJtjB2UgWEYjOjWlDV7ikLO+82rerNmTzHn\ndG2MYRjcfkY7xvRrSW6xk85NZXKSAhZvLeAfo7qxs6CMlNgIHv5a0hLfe3YHUmNDXTeX9mnJM9PW\n8v6C7VzYuwUntawlH9Bhcs27UgZw279GhizfU1hOUrSjcozGz7M/rOOduVtZ+4/hRDmOrk/9f40W\nfE3DIycHevSgwh5BtFvcEJU+/GDBLyyExER++FNyshvKL/hmlI5yYXXI9HRbeahgerGSp+JJdubj\nMfedYJRQoGKJclgrI4SSYxxkpMbw6hW9K7e95bS2PPfjOjbmlDB3Yx478st4e+4WouxWtuXL4OfS\n7fuY+PsWhnZqxHemFbx4WyDXyjPT1pJX4uLnNYFMnD2f+pmOjeNokRTF5f1bYhgGPp8ic3cRmbuL\n6NQkjtTYCF4c0xOvT9E0IXTq/cuXnYRShKSRdtgs3DmsfUi7lsnRtEyODlnWp1UyfVqF+phTYyNC\nRPyMjo1Y9eQ5le935Jdhtxpc0qdlNbEHSIi2s+jhYQx49ld+zsxmddZ+tueXcfdZHYiJqC5NZS4P\nM9flcEq7NBKiA9Z3XomTbXml9E5PYv7mfLq3SCDBrGfpT4YHcqfnH/MoLHMz8NmZjOnbkucuCR1I\nfXee5AD6I2s/A9qkVDuPhowWfE0o7vK6T5g5GEpJNseU9kc2l/vevdCoEeWOKOLd4kP21eTDn/0e\nTnayYe9QwJAMk0CFaeFbvC6sdhH/yLI91Q6TrxKwV+TTMjmaglIXiZSwX8US7bBVdjDJMY5q253Z\npTFndmnMyFfm8OHCwJ1Ds4RILIbMGfhkkfjR12UXExdhIzrCyt4iJ5f3T+fpUV0ZM3Ehb84W3/vz\nl/TghZ83kF1Uwfq9xbw4umflgLDFYvDJTQPIL3HSOjXmgAPFhmEc8YwFByI9JZr5Dw4jKbp210jj\n+Eh6tkjk9d82Vy5LiLJXdkLZhRU8/9N6bjmtDY9/m8mCLfn0bZXEvy/pwZbcUvJLnYyftpaiCg/D\nuzbhx8xs2qTGMP1vpxBpt1YWogeYtymPoZ3EVTZj7V4A5m6SCJl/fL+GVVn7+fLWQdgsBm6v4s9d\nhVrwNQ2Qfdtg6xzoMkqm1Nc2U2/9j/Dl9RLWd/mnhy/6C16VwhQ9r4BRrx6ZkDOXC/bvhzg75RGR\nxHnEwvd5XdLBFOQF2n79KBEZNtKNbuxQjSurI7mUDZ8ysHid2EzBt3vLqh0qTyVgLV3DW7f04YWf\nNpC4qpRslUS0w1op+DVZrn56tEgk08zT88KlPbm4TwvKXB4e/zaTL5cFSuJdN6Q1A1on81NmNg8M\n74TNauGLvw5kW34pidEOkmMcnNI+jQHP/grABSeFTvxKiLJXWrTHG3WJwBnUNoWVO/fTKz0Ru8XC\ntNV7uGNoO5bv2Mez09exdPs+vlou1+vUDmn8viGXoS9Uryn8Y6bcDW3JK6XTYz/isFpokxYYm/lq\n+S6GdmqMx+vjK/P6+6O0/FZ9TlFFZY6mhVvyufGUNiHHKHN5+O+MDdx0ahsaxUXW93Icc7Tgn+j4\nvPDRxZJn/bs7AAMunCDxv368bknANeVmKcqw4QfJ+tjz0BI0yT49sNDMwfLHJ1I+LrUDXDvVzBBp\nkr9ZUgX3uRZS2h58v/4JVavfxGaPJdasF9pm6miIjoGcIIusRP64rY1sLh52CigpxuHFghM7UV4n\nNmugE9rhSyPdEnDtbFLNsJT+RqMdP3KnexYWo4j1qiXRDhsD2qQwc10OGSmhro9gOjeVrJBDOzXi\n4j7ir4922Lj9jHbklzi575yOxEXYaZ4UhdViMKhdoCO2WAzapAUGGZskRHJm58akJ0fXWtmroXLN\nwAzKXF6uHZTBjDV7GT99LRe8Pp8/dsr4TJem8azZU0T7RrF8cH1/Xvh5PVvySomLsOGwWfhLz2a0\nSo7mie8yuWpAK5ZsK+ClXzbi8vpYly1zClqnxrDOTKHx0i8bWbBFipTsLCgLmQ9wxn9+AyAjJZoF\nm/NxeXw4bBY27C3mwwXbiXJYeWvOVjbsLeH962vIeXOcowX/WKGUZCI0rJL8qtUgyTFesFnyex+J\nWX75m6VQc9EuOOlKKZywN1MSOZVkS7KszbOkdmdZnlT3uek3eP88KUKR1CpQz7O+bPgRirJgzEdS\nLCNrqeRxeW+EJPqKiIXc9bD1d6kKlbdBZjceDL/gxxo4HB5iTR9+bM5yKPTBhKDSgyVi0Tc38uiV\nnljp0vFiwYWdKI8LiycwM3aXSiOdgOCvVWamwy/G0gLAwHTpWHn1il5k7i4i5QAW/qnt5Tu8YUho\n+bnWqTG8d139xeLtsX3rvU1DoElCJE+eL4nERvVqxjtzt7JmdyE3DGnNxb1b0KFxLK/M3MQ5XcUd\nc6+Zyroqb1wl2UcHt0tlcLtUPliwvTJK6JT2qXy0cDsVbi+/rN2LzWJwy2lteXXWJv7cHRj38Vc5\nu+2Mdjzw5Soe+PIPXrqsFy/9soHpqwPjKfM25VFQ6qrRpVcn5s2Dd96BJ5+E9PRD28chcNQF3zCM\n4cDLgBV4Wyn1rwNu4HVLhRp7lKRidRVLsQRPhUxQKM2VrH/l+yQbX2J6aF5ojxOy/5T8HkmtRViO\nFCW54HNLNkSrHSqKJLtfcKIsnw8q9ov7whYl7T1OcY/4EyeV5sP0+6RaT03MGg/nPCvVfg6HFR+J\n2A/+Gwx7UvzoOeukE/DnSk/KgNT20P1hycMSnSxTy98aKm38ibnqg7NYqgvFN5cp5VabVOxpfarc\nZezfIa6liHi5Js1Okg5i+v3Q8/JAzpaa2GpWFooxsDs8xLjKzYLkwLyAvxYLlRZ+MyOP2EgblMqf\nWZmCj6cipIqVIy4ZWl8kFZi+hLW+6n/E/SqGdIeVaIeNfhkHniiTkRpTLTJEc2AaxUXy499PQSlI\nChLTe87qUK/99MtIpn2j2ErB7986mQ8WbGdVViHr9xbz92Ed6NMqiVdnbWLS/G0h235+8wB6tEjk\ngS9X8c3K3Tx7UQ827C0xzy+Cm09twzPT1jJt1W6uHphR/w9ZUQGXXw47d8J770Hv3nD++XDPPRAX\nV//91YOjKviGYViB14CzgCxgiWEY3yml1tS4QfZq+Gdz8Pr/uAYS7HUQIhPAWSIi7AnOZWJIJRv/\nbpRXrFqf+ax8gXZel4iyxS4CZbHL/ixWcxDTInmrQazyyIRABRt/wix3RdC513RBrNI5mQONDLpT\n0slGJsDulZJgKaUd/PggfHvOqQtmAAAgAElEQVSbuGFOGwf2Q/AVKiWVl9qcLtWH/DTqBPeug4pC\nEbv45tV99XGNpWTcjMclR3dyqB/zoHx3l1yr0R+Gdoa9r5Y0sH6Xji1CHuX74LkMqeqz9nspwlHb\n+ME2U/DbdCNq/gpiSstIxhyotQdtE2sECX6+pFAoEcH3YsFt2OU7DxL81MbN4dKJ8ubLaeRTPRHa\nfmLp5NA3xkeTqvMTjsR+OjURIf16RRZKQY+WCfRvnUy7RrFMWb4LgCHtUomLtNG/dTKGYfDetf24\nbtISFm8rYFteKbef0Zb7z5Gi5V8szWLKil2HJvhffSVif+ut8MknUFAglv6kSTBzJrSuW0HyQ+Fo\n/3L7A5uUEuepYRifAaOAmgU/KglOvlEExm0WBLZFiEDbIkSwY5uIQEYlSY7vfduhcIeIsi1SLO5G\nneROYd82KWRgWEwxt4roWmyB1378A4o+j2zrc4sf2uc2LcEKcbXEpEDhLrnTSGolbcvyAUOE2RYl\n1Wt8Xkn5arHLefncImzuCmnXYwykBd2adr0w8Hrs9/DVjVIbdevv4haJb1q/K5+zVjqMAbdWX2ex\nmnm5D2Chdr1IBH/1V3Da/YHlRbtF0KMSJaOg1Q6thsj+8jZKibbMKVIztNO51feb2q76sqgkuOAN\nGeAt3iPn3tjMJ793jXx3/qRSWWbZvJNGYPliBbHOElKMGgQ/yoAKhceIpLnKlTC/Ki4dPM7KHPcA\ncSmBa/z6lb2xGMDsTlLYwyRXJRJ9gsVmn8hMuLoPDquFjJQYLAZ8uljyHHVvnoDDZuGqk9N58nuR\now9v6B8S5dQnIwnDgA8XbMfjU7RvFLC+L+nTgvHT13LDpCW8PbZv/dJofPklNG8Or74Kr70mv+9p\n02DMGLjhBvj11wMHTBQXw003wW+/gd0O/zqw0ySYoy34zYHgTFJZQC1p/JDpxWc/U+vqsMFihUvf\nk07g61tg4umSkrZgq/jFu14Iva6pOef65lkw//8k/a0tUsqpHQqJLSUf+KrPpPqO/wc4c7yk142I\nD9RYtcdAdIrZ8UZVr9hTF066AjJOgZe6SSfXuIuMQUw4RSow3b5I3HfZu8EGBc16k+yASGdFQPDb\n9IPZc+V1pAh++e9R9F2ynJK/OaUTBnwYYuF7nIG7LSA5LRD9cm53U/xT35YqTqYLLEcl1hgjrjk+\nCZ489vC5nXlm2lq6N0+ojK7q0ixwF1dVtOMj7XRuEs8va/ditxoMbBsICLhucAaZuwv5ZuVu/txV\nRPcWB0mL/e23cMEFcOGF8OOPItjBocojR8Lzz8Ntt8Fnn4nLpyYKC+HKK+GHH6BnT1ixAq66qo5X\n4+hny6ypmwrx0RiGcbNhGEsNw1iam5tbQ/Mwpsv5cOMMuSOYNR62zJIB3ql3ixCu+kLCLef+V6rc\nT7kZPr1cCiandZTycsERMfWl9zVyl/D1LTJe4S6XaJ6TroL7NsIt8+D6n6Uknz1SOuu/rYQznwgU\n36gPiS0hIR12mAWyl02SOy53GfxmWjHZeyHWysWTc8BhEOGqIMXv0kkKugsyBT9u5nasxV5ilv1W\naeH7sODGLu63IJdOjQPlTbrLGIhJDkmVoXyahsWNp7Rh/TPD+erWQZXL2pvpFk7tUHOQRN8MGXcb\n3C6VxvEB16rNamHcCHHvrNgpCfuUUmQXVlTfSUmJuG8Avv5afPg1ifTNN0OfPnDnneLmqYpS0mlM\nmyZW/fLlsGNHvea4HO1fbhYQXP24BbA7uIFSaiIwEaBv377HYb7UY0zjrnDHMhGmyPiAb37G4zDl\nxkC7pAxxL2UMhgvePDJRPt1HS4ey8iNxu7TsL4PoPUaLwDcx85/Ulnv9UGg1CDb/Ktb46i+h/TnS\nec1/RSov7c2H5GhyVQI4DKweL6k+M0Omv0h0S6sIfmng52Sb/iLccBvgt/AdpoUfJPjNeh309HJU\nohb8BkzV7KJJMQ6+v2MI7RvXHNxxesc0PliwndF9W1Zb1yQ+kuQYB5m7xOB4Y/Zm/v3jegCm3jmE\nbs0T4KWX4O67ZYMJE8QN06UL9K8hSstqhXffhZNOgvHj4YUXQtf/8INs/+yzcL/pZm3ZEq65Rvz/\ndeBo/3KXAO0Nw2gN7AIuA644ysc88bDawGoWUzYMmUDVYQTkZEJZgbg6UtsfeB+HgsUCF5g+xqXv\nSEcT3zxQbu9o0GqQuJFmjZdC2MP/CZ3OE/fO9Ptgbwl0aE4JUbjsNhw4aeouwBdtx2LInzZ7TDMK\nZkfQpWRTYL87dlS6dLxY8AS7dE6+VUoHHqha1Y0zuev1KbiwExdxfE5yatC43bB9O7RpA/Pnw8aN\nEBkprw1DXBldukidg5rE8jA4kDtmaKfGzB13Bs0To6qtMwyDrs3iWbxNMqou2Jxfue6N2Zt5rX98\nQOy7doXrrxcr/kD06AHXXgsvvgi//y53BC1agNcLDz4I7drBvfeGbvPOO8eH4CulPIZh3AH8hIRl\nvquUyjyaxwwbbI46WaRHhNPGSQx90S4Y8fzRLdLQ/ix5nvOCVAjqOFIGhi+dBN/dCUUTUWlJgEGx\nI5oUSkl17cflSCLSK4L/rHEl6RE76UKQ4OcVy6A/4FMW08KvAFcpOKJF7DdvhtNPhzlzICMj9Lxa\n9OE7n8Rhx2oL/8iSmwvDh4uLIjFRZlLXhmGI2+PKKyE+XtwlWVngcMDJJ8t+7Ee2Q26RFA179sD3\n30OnTnBqoMDMqJOac98XfzBmwkIWbyvgnDbx+H76mUff/xCyzbQaq1dLR2ar4+/mjTegSROx5Dt2\nFN++zSb7+fzz6p/vOHLpoJSaDkw/2sfRHEUSW8ItcyV+/jCqKYWQmSlWyRVXQK+gjiu+mbiS8jfC\nlV9KxwbyPOAh8EzE03s4VIA1MQXIJcVdhCsiiUizUNP3DOS8JE/lLktS44jNKwvy4Rt4LQ5w5kkn\n4J/HMXGiiMfHH8Mjj9R66tYTbKbrMSUzU1wSa9bIQOaff8qA5bnnynfRuTPs3g0dOsiku4kTYerU\ngOVcldGj5furq7jWxJIlEib50EMwcCD897/w8MNyFxIfDytXVoZODu0kY2SLtxWQXFbIiw9fT0y+\nOTkwORn+/W/oJq7P3fvL8fpUtcR01YiIgH/+UyJ2brsNbjfLIg4eDJdeeuifCz3T9thRUiKz7Soq\n4MwzIaYeRZ+zs8WHN3++/Jiuugouvrj+Ccp8PgkBc7vFMjrQ9smt5XEkmD1b/tBlZXLLunFjaBja\nxW/VvN1uyZNT3r43rAZXnAyoJbqLcTlagMuFsljwWawM/ctg+P4/AJSkJhFbmAWFkj9FXDoOCZMF\niTICERMQV0INvHzZSazYcQDrU1M/Nm+WSUdeL0yZIpOPgmlrptpoZAYeZGSIEI4fL3HsSkF0NMTG\nStK8N96Ap56SAjkTJ8LZZ9f/nGbOhGHD5PX06XLXsGiRuFLGjxcRvu8+iaUnkDwvvqKEDyY/Tkx+\nDmvO+AvXdr6E7/45mo8XbWf35D+YYsb/R9gsrH9mBEop7vx0BX1bJXHt4Fr+V23bSkTPO+/Ahg3S\nyR1mfist+D6fJOTyeuXh84nwKQVOpzynpAQsBp8vcNELC2Vblws8ntCH1ytCWlEhDzNxF7t2SYjW\ntGnSDmTgZfJkGGCmMVBK/JkWi/zYgwVo0yY46ywR/eHDYdky+O476N5dBnWahybWqpXycon7/f57\nef+Xv8Dbbwf+XHXhvfckjrhVK/mz1WXbnBy46CL5zGPHiuW0YoX88Q/GasmtXtKuE6zOwh0vYXKJ\nrhKKjHjmLtrK+WYytOJO3fhx4F/4ukl3Htv2FeQBvz8PmFE6lgiZsQ1i4ft8AVeC/7uqwqiTmjPq\npDpe32AKCkRIoqNFmC69VAbo/FRUiEtixQpo2hSaNav/MRoijz4q12HFCvHP1xXDqJ6OICoKnnhC\n7hYffBDOOUfE3+uF666r7qKrjQkT5PmBB8Q6X7RI7kLffluOsXgxvPKKlNJMEoNjUsRGer39L+IK\n81GffMIfbQeTM2V1ZbK7YJweH/tKXZQ4PUxdtYepq/ZwWf/0ajn5Qz7rjTfWvO4QOL4Ef8MGEbPC\nQhEkt1t+EIYhKXH9ouwXZp9P/ijR0YGHxRJYF/zwp8+1WGT7ffvEwnTVXnA5hMhI8Z0VF8v5qMMI\nKGrWTEKvzj5b9nP77XDKKXDZZVBaKj7kPDPrY0IC/P3v8hwVJbeaXq+06dtXXr/3nkzLPu00EZbk\nZLljqM0aKCwUa2rOHHj6aVi1Cr74Aho3FgHetAnWrpUIg6FDa97Hp5/KIFT37nKL/dtv8me55JLQ\ndvPnS7TB00+LH/OWW+TuZs4cSE2VP71/xmHTpvIdgnReP/wgr9u0kVvb1ashKorC5ulAFt5Eya2S\n5C5mRoGV/P2lOC3yk7ZHOPji5sf4dV0OD+b8BK7A91Xp0vFjjxZr009p6cG/w7oyb57czQSnbf7h\nB7kra9xY/szLlsnv2C/8114L//nPUZ9mf8zwekWMP/tMRLo+Yn8gDANGjRI/+5gxsm+ABQvgZzNF\niNMp/7PoaDFWEoOKrmzfLgbQrbfCc8/J97BpkxhDfi6/XH7PkyaJxb16Naf/w3QvvfUWXH45ZxY7\neYjVIacWabdIVbJZm1m+Y19I6cvM3UWkJ0eTEuM46onxji/B9/lEUFNSRGAdjoDADx4svi2rVUTb\n/+xyyR+0rEweUuEh8DCMQKehVECok5PlS4+KCuzXZgt0CIYhywHy8+W8PB75Eyol7ePjpU1EhGzr\n30fwI3j/ID+wzp1DxXjZMrEovv1W9j9ypPgOrVZ4/335c/hp00buDjpJDDBWq4hGt25i1bQyE36N\nHAnffBO4M/n5Z/FJduwowrlunYjsZZfJ+qeeks7kn/8MHGvYMOkcYmLkzsRvVRUWSgdz8skwd66I\n+t13iy+2a1f5fCAd9qhR0nlNmSIW0b59Mgjl/5P/97/wt7/JLfMNN0jHMGqU+FEh0IHHxcl16t6d\nMjN9rS9JQk+jXU4KVCx2bylemwxo2a0W0s1Mlp7o2BDB92LBYwmaJ+CIFt+xn5KgBGx1wecLdI4n\nnRRYvnw5DBkit+YvvSS/hQcekCLsH3wgbWJj5U4nMlK+89mzxR0xcaJ0iB06SIfx8MOB3/CTT8KM\nGTBihIw1HMlaA0eTpUulg//pJ3k/ahQ89tiRP07HjvJbmTIFXn9drpXNJmL9xx+Vd4qkpsLLL8tr\nr1di3CMi4K67ZFnnzoHfsp8+feR7fvhhuaP9v/+TbbZsqbwzS4uL4Knzu/LEd5m0SIoiIyWGF8f0\nJC7Czlu/b2XupjxaBfnxL35D5p389dQ2PHRulePVgYVb8g/eyI9S6rh59OnTR2mq4PMpVVys1M6d\nSm3apJTXW3vbVauU6t/f360p9fjjsvyrr+S9YSiVlqZUerpS06fXfKz585V6/XWlHn5Ythk3Tqkz\nzpDXAwcqtWuXUrfdppTFotTSpYFtd+9WKilJqfbtlSovl2Xffy/bjR6t1LBhSl12mVIzZshxgo95\n8smBcz79dHlOSVEqO1spj0eppk2VatxYqYgIpe6+W81en6NajZuqtk1+SdqOjFTPP3mX+qTH2Wp/\nYqpqNW6q+m7lLrV8e4Fq//B0lXvFRUpZUeqJeKWeiFddx01W37x4a+V7tXGGUk8/LfuKjFTqllvq\n9x39/HPg/FetCnyu006T/W3eHGhbXKzUwoVKvf22Ug8+GLrOz7RpSj3wgFIXXKDUgAGy38GDlXrv\nPaUuvTRwLFCqTRulNmyo3/nWRkGBXPOSEqW+/lp+C7NmyW/vllvkO+nUSam77lKqrEypSZOUmjxZ\ntiktVcrlUuqzz5SaMEF+I7feqtRzz8l3+OabStlsSkVFyfJPPw39HRwtsrKUatVKKatVrldSklL3\n3KPU5ZcrFRMjn1kppZ59VtZ/9tnB97l4sfwW/f+pzz+v1mRrbonq9sSP6qc/94Qsv/H9Jerk8b+o\nR79erTo/9oNqNW5q5aPfMzOU7wDXJK+4Qk2cvVnd+P4S9d3KXWreplw1d2OuajVuqgKWqjpo7DEX\n+eCHFvwjhM+n1KmnKhUdrdS2bUp16aJU167yp6wPo0cHhOWUU5RyOJSKj5f3d91Vvf1nn8m6tm1F\nNMaOVSo5WYTgQJSWKtWxY+BYXbvK9n4ee0yWN2qk1JYt6ofVu1WrcVPV9pmTZflZEeqeRx5UX3Yb\nqnJTmqpW46aqH1YH/dHu/qtSRkDwO477Sn310t0Bwd82X6kxY5Rq3VqpjAylrr66ftfp6qsD5x4b\nq9RTTynVq5e8f/XV+u2rKj6fUi++KNfef4xbbxURfe89peLilGrSRNr07i3tLrpIqU8+UWrdOqXe\neksev/wi4jt5sgj5tGnS6WRmKvXbb/L5Y2KUstvlOwvuVPyPMWOUOvfcmtelpSnVp0/oMr/IpqTI\n8znnBAT2WLBqlVJ5efJ65Urzt3OWCDaI4XEggyqYigqlfv9dqe3ba21Sk3h/syJLtRo3VbV/eLo6\n///mqLHvLlKj35yvPl64XbUaN1Wt21NU6/6emZoZ0kEEP+oq+MeXS0dzZDAM8U927x4YrPrii4B/\nvK48+yz88ov4+999F2bNkkkfXbvKgFZVRo+WqIJJk6B9e7mNHjr04HHR0dHw0UfQr5+8v/PO0Kil\nxx4Tl1X//pCRQalZrcjeyBxAdUG+Lxa714PbzC/ksAW5zBKbSUIPnwKLgRM7PmuwDz9KwgO7doWt\nW+vnw//uO/jwQ/H7nnce/PWv4jvu0EHcZTfdVPd91YRhiLvszDPFnxwZKa47i0V8zPHxMm5yzz3S\nvkMHceVNqSX1dm0kJMj5R0SIS6t/f7nme/bAwoXy3fqjXsaNE/fMffeJq2/FCnFpbN0qLqYxY2RQ\nPjZWfgvTpsl3/OqrlQOdx4Tu3QOve/YUt+f06TLO0rOnjEPV1T0WESHjbgegpoRqwzrLuJPL62NA\nmxQeNNMz7DFTMszekEPHJjWP3SzcIukWmsRHkl1UQwqHOqAF/0SlWzfJt/Hgg/LjvPDCg29TlTZt\nxP/u/+EOHSp/7towDOkYJk0SoQDxddaFvn1lAs6ECSJkwdjtIjgmpS6JbopIbAR2wKUoUHE4vG6c\nVulcHMFRMA5T3H2ARfLh+yxBkU8uYP16EbycnLr78JUKxIPfcovMkty+XcZ8UlOPTF1gP927hwqW\nn4sukvGltWvlfPr1k7GThQtlbOWMM2Tsad8+6YD37xchtlplkHzpUhksvu662g2CqlEizz1X9/O+\n8cYjGmVyRHniCemMysqko64lHPdIEhth4+wujfl5zV7GDsqo7BSaJUbRqUkcb87eQuem8ZxiFs/x\nV9wqLHOTubuQu4a1556zOrAlt4RIu5VmiVG4PD4i6viVaME/kRk3TkQoLi40DLA+1Fe0DEMGK/1h\nlmedhden6jZZKTUVHnmECrcXi/lDr4lSp8yYjUpIA4cBLsU+YnF43DgrB22DjucXfC+Vv3ivNWjQ\ndv4yEcmzz5awu7oK/pIlYtm+9ZZcZxALMe0I5DGqDzEx0mH6sdvF+jyIBQqIZRuuBA+wn376/+yw\nL1/Wi3K3t1q1rNM7NuLN2Zu5+p3FfHHLQNxeH9e9t4QLezXn9I5p+BQMNjN2Bpe/rO1/UhNa8E90\nRoz43x+zVy945hn480+e3eDikw9+ZuUTZ9d5hmr/8b/QuWk8n/91YI3ry1weDAMio+PAAbhgv4oj\nwusKWPjBfwK/S8mr8Cdw9QUL/nozJLN/f3Ft7N1b+8kVFUkHahgSSRMTE3L3oWlA2O3i+tq1q3o0\nzlEkymElqoaaCmMHtSK/xMmXy7O47ePl5BZLMaXPluzksyU7iXZYOSk9sdp29aGBxHNpDpesfWU4\nPd5D2lYpRU5xPX2GjzwCn37KhNlbKHZ62FNYfvBtzGMVVXhYtLWG9LAmpU4vMQ4bhsVSaeG7PFYc\nHg/llkBYZiXBFr6JzxZ0+75hi4ScxsQEQkf9fPutiPvFF0v8fEIC/OMfEs/95ZeyPD6+Tp9Ncxxy\n4YVwxx3H+iwAaJoQxfOX9uSjG06uFPsvbhnI4+d1wWG1cN/ZHatl+6wvWvDDgA8XbGPIc7O4d/If\nh7T9bxty6T/+V740B0v9+HwKn69uE9Bu+3h55esKt5flO/ahlKLCHdoJlQe999ay7zKXJ1B1ymHA\neg/rX7iYPrvWUmFOvIqoycJPbMuciNMAUMEW/sJFEl8Nocm7srMD1vuUKRIPD5KrZflymY8walSd\nPr9GU1cGt0vl+Ut6MKZvS/q2SuL6Ia1Z/dTZXD/k8FObaME/wVFK8fxPZo7uVXtYu6eoWpvPFu9g\n8L9mUlBa86zjRWZ0wGeLd1Quc3t9XP7WQi58Yz65xU6J8T0Aq7IKKaqQYuOvztzERa/Pp/VD0+n0\n2I/8sibgQikqDyQ9q+2uoNTlraw65WsWKBNpQVFhlq2s0cIf8zkvJYwDggS/zAfbtsnEPhALv6xM\n3jdtWn0m9uDBsr9Fi+S9Px2GRnMEubRvS567pEfloO7hWvZ+tOAfxxSUusjcXXhY+xj73hKKKjwM\nM7P6jXh5TqU4//hnNi/8vJ7nflzHrv3lXPHWwhr34T+HFTv3k2OGg32wYDuLthbwx8799Bv/Cw9/\n/We17YpNgR9ulpn7YfUevD5VeacQb6YZ/mVtkOCb2wBk7atZ8MucHmIi/BZ+Ssi6xiUy6zDEh+8X\nfI+38g+k/C6dYrOj8s9Q9ocNzp9f47E5+WQZqF24UPKUh0veG80JgRb84xCnx8sT3/5J76dnMPKV\nufz4Z3a1Ni6Pjw8XbufRb1azs6Cshr0Iv2+QspG3D21Hy2RJA7xwSwGrswq55aNl/N/MTewrE5Fd\nl11MmcsTsn1BqYuVZoZIr0/R/5+/Uu7y8tWyLHqlJ/LviyU65dPFO5i5bi/5Jc7KbfeancOI7k1I\nT45m+upsVu7cT3ZRBa9c3ou5D0qenuD8IUXlAcF/ccYGFm3J56Epqxj77uLK5SVOD9F26SyM4Bw4\nwJ44iZAJsfD9Lh23G4s/6shfgrHITJTmTzoXHCc+fLgktfPnYQFJk1BeLrHu2rrXNDCOqyidw61v\nqJSqX/X4OuLzqSOW1Mjj9bEuuxiPT7GjoAwDaJsWS+emcRiGQU5RBX/7bCULtuSTEuMgv9TFe/O2\nMrxboBjz/jIXoycsYMNeCR/8c1cRX906CIsRmOyhlOLpqWsBGNgmhd7pScy4+zQGPPsrE3/fzO79\nFcRH2miVEkOEzYLL62NVViF7i5y0TrWhlOKJ7zL5YIEUcbjltLZMXbWbrH3lTFu9hzV7irj/nI6M\n7teSSIeVuz5dwfWTlnJm50a8PbYfJU4Py7bL4Gfj+EhGdG/Cu3O3kmHmtxncNoX4SDvtG8VSUBJw\nmwQP1i7eWsCYiYG7jgq3l0i7laIKD80TTQv9mmtkvgFQao9k/NAbgFosfJerMsrUZzNz4PstfL+l\nHpxMq1cvyWy5bFlgmT+M0ekUa1+jaUAcV4K/ZncRp/x7Jk63D69PYRgyOTLCZsHl8eFTioQoO7GR\nNorKPRRXuDEMgw6NY9lTWMGe/RWkp0RTVO7Gp6B5YiRlLi95JU68PkXj+EhiI224vT7yil3YrAYe\nMxFXhN1CSowDwzAoc3nJLXYSYbPgU4r8Ehc9WybgU1Dq9OD0+GiZHE2p00OF24tPgc1iYBgQ47Bh\nsYDHq/D6FOVuLyVOD3arhQq3t1Y3xSV9WnDzqW24bOJCylweXri0Jxf3acGT32Xy+ZKdeLw+bKbV\n+vacrWzYW8L4C7uhFDz6zZ+0fXg6Y0y/H8Dm3BLenbcVCBRojrRbGdOvJRNmbwFg0nX9OL2juHrm\nbcrjyrcXkVNUQevUGLL2lVeKPcDJbZL5+5nt6fHUzzw7XTqSU9pLDdlTzWeALbkyS/XC1+axMUc6\npKYJkYzo1pQJs7fw/oLtDOvUiJRYsbCTYxzkl8pdgdPjrRxvqInswgoyUmMoKnfTuanMRjTGj+eV\n2Vu5a8HnfNVtGFkJjc3PWoOF73Lhv6n12c3ZjEWm4Dc1C6AHW/h+8fevg9B492MR8qrRHAbHleAn\nRtvp1yoZu1UsTqUU0RE2XB4fdquBzWJhf7mbkgo3LRKjSYuLoMLtZcPeYuIibZzaryV7iyqIi7Rj\nMWBHQRlpcZEMaJOCQpFXLHmoFYpOTeLx+RQ2q4FSMtU5t9iJYUBilJ0uTeNxerwopMPZlleKzWqh\nSUIkFW4v+0pdJETZSYq2AwY+pfApRanTg/JKVSSHzUJMhI22abF4fD4ibVZapzqxWgzapsVyce8W\nVHi8/LB6D2/N2cqXy7KIjbAx9c4htGskgtQrPZFJ87exLrtYiiIDM9flMKBNMlee3AqXx8fOgjIm\n/L6Fz5fu5MnzuxJpt1Ra9wCN4wMRKXcObY/Hq+jSNL5S7AEaxUmb2RtyWbKtgIFtAyI+pm9LTmmX\nis1qoX9GMnM35ZES46BbswTze3Mw4eo+fLRwO6uyCvH6VKXYy/EjSU+OZuzAVmTuLuKRkYGY55RY\nB+uypVTVtrzqrqmWyVHsLJBOMrfEWSn4CVGmiFssvNPvAvrsXssbAyQ1s2GAo6ZBW7cbkM/piTDF\nvNgnWQ/9bWoT/NatJatnRISkg968WVIxaDQNiONK8JsnRvHimJMO3vAEo1fLRNxexaT52/j7me0r\nxR6gb0YyAI98vZp/XdyDtLiISncKiOvioXM7M7hdKte8u5iFW8UVNNv03YOka/UTG2HjsfOq5x9v\nFC8uktd/8/vEN1Su+9fF3StdRef1aMrcTXmc0alRiJvrnK5N2JZXypyNeUxeujNk3/7iDk+N6lbt\nuCkxERSU5jN11W7u+ETSNnx/xxCKK9zERNjo2iyeV2dt4qVfNpJTJHdqxU5PQPCBwqg4rrwskNY5\nwmYJde2FuHTkWlhtdjtYBIcAABI0SURBVBhwG8yeBc2DInGCBd//2jBkoNbPyJHVPodG0xA4rgQ/\nXDEMgyf+0oW/ntaGpglRIeuaJ0Zx45DWvD13K+e/OpeR3cW9cEqQGwWgf+tkIu0WPlqwnT4ZIlQj\nezSlzOmhd/rBE1bF11KYe96DQ0PEc3TfljSOj+TkNsnV2vZsKRbx+/O3HfR4fpJjHOwvc/PwlEDB\niKQYO91bJFS+v3pAK176ZSN/7i7kc7MziY+snpDNZjHw+FT1ELYQl47Z1mrA8GfhwZMk0VflCQV9\nrkGD6vw5NJqGgBb84wTDMKqJvZ9Hz+vCdUNaM/bdxXyzcjfJMQ66N08IaRNpt9K3VTK/rsvh13U5\ntG8Uy2tX1KFsYNDx05Oj2VEl4ielSr4Pi8XgjE41lzI8uXUydqtR6aK5YUhrujQ98CzUjFQZxC2q\nCEQHxUaE/iyToh3YLAafL9lZOVcgvYZC0DarCH6I/x5ConT80wX84yFkZYVG29jtMiBrtx/Z5Gca\nzXGADstsIDRPjOIfo8RnfEX/9BqjkfypVgFapdSjKLrJy5edxONV3D211tqsAcMwQlwtj53XhYv7\ntDjgNu0bVU8FG1NF8C0Wg0ZxESETw3q0TKi6WWUoZjUL3584zhuYxWu3GJIXJz9fsoIG43Bosdec\nkGjBb0AMapvKvAeHcu/ZHWpc3615AhOvlhQBNVnAB6NXukzjnnrnkEM+R78FXfUOpDbaNYqttiwk\nht7Eny4W4OvbBtEornoqW/9AbTUL31/m0eOp1HGrxZD87SADshpNGKAFv4HRPDHqgHMNhnZqxPOX\n9OCB4R1rbXMwujVPoFlCJH1b1b9Yhc9U/LoeP9JupU3awe9G7jqzPQA9WyTQq5YxiVotfL/gB1v4\nVktgILaqha/RnKBoH/4Jhs1q4dK+LQ/e8CDMe3AoB0mPUyMVbpm5Wtt4RE1cM6AVT36/5oBtmidG\nMfmvA2u8I/BjN6tcVbPw/S4djyfIh29IlSrQgq8JG7SFr6kRwzAOaXbxQ+d2wmG10Dq17mMILevo\nfurfOrla0Yhg7Ja6W/g25QvkvT+WZfc0mv8h2sLXHFGuGZjBNQMz6rVNYvRBat7WEXs9fPhRpRJJ\nxNChR+TYGk1DQFv4mmNOQlTAaj+cAWO/S6fWKB1PIPQzstAscnL99Yd8PI2moaEFX3PM8c8EHtm9\naWX6iEOhctC2NgvfK3mPAKKLzSInqaET2DSaExnt0tEccxKi7My673SaJlQPtawPB43D93jw2cxk\neX4LPyU0n75GcyKjBV9zXFCfQd7acFQK/oEsfBF8xz4plEJaGhpNuKBdOpoTBptVfPh2a5XooqBB\nWzMbNvYCLfia8EMLvuaEwe/SsVoOFIcvim8vyIfoaHloNGGCFnzNCYOjUvCrrAjKpeM1R23t+bna\nuteEHVrwNScM/oli1qqpJywWSYbm8fDK5b0Y07clCSX7pfCJRhNGaMHXnHBUc+mA+PE9HtqmxfLc\nJT2w5OVpC18TdmjB15ww+CNwaki2KYIflFqBXO3S0YQfWvA1Jxw15gCyWgMzbZXSgq8JS7Tga04c\n/JkwaxL8YAu/tBQqKrTga8KOwxJ8wzCeNwxjnWEYqwzD+NowjMSgdQ8ZhrHJMIz1hmGcc/inqtEc\nGL9Lx1JTvQDThw+IdQ9a8DVhx+Fa+DOAbkqpHsAG4CEAwzC6AJcBXYHhwOuGYdS9Vp5GUw/O7NyY\nAW2SK3PdWw/m0tGCrwlTDkvwlVI/K6X8KQgXAv4CpqOAz5RSTqXUVmAT0P9wjqXR1MbbY/vy2c0D\nUfgHbQ/i0snJkWcdlqkJM46kD/964AfzdXNgZ9C6LHOZRnPUqLOFX1AgzzpxmibMOGjyNMMwfgGa\n1LDqEaXUt2abRwAP8LF/sxra11gwzzCMm4GbAdLT0+twyhpNzfh/YNUmXkGohV9sFj+Ji/ufnJdG\nc7xwUMFXSp15oPWGYYwFzgOGKVVZBTULCC6s2gLYXcv+JwITAfr27XsIVVQ1GsH/66sxLDN40Lak\nRJ614GvCjMON0hkOjAPOV0qVBa36DrjMMIwIwzBaA+2BxYdzLI3m4Iji1xiWGezSKS6WdAuRh5d/\nX6NpaBxuPvxXgQhghiG30QuVUrcopTINw5gMrEFcPbcrpbwH2I9Gc9gc0Icf7NIpKRHrvibXj0Zz\nAnNYgq+UaneAdeOB8Yezf42mPvj9gTXG4Ve18GNj/2fnpdEcL+iZtpoTBqUOEpYZ7MPXgq8JQ7Tg\na04YfHV16RQX6wFbTViiBV9zwnDAsMxgl4628DVhihZ8zQlHnQdtNZowQwu+5oTB78M/aBy+HrTV\nhCla8DUnDP6wzBqDLbVLR6PRgq85cfAnT6sxvF4P2mo0WvA1Jx6qpgQdfgvf55MCKNrC14QhWvA1\nJwzRDplHWOaqYVK338IvMzOAaMHXhCFa8DUnDHERIvjFFe7qK/2Dtk6nvNd5dDRhyOHm0tFojhvu\nGtaeDTnFnNm5cfWVfpeOyyXv7fb/7clpNMcBWvA1JwwZqTFMvfOUmlf6XTp+wXc4/ncnptEcJ2iX\njiY88Fv4btPdowVfE4ZowdeEB34fvnbpaMIYLfia8EC7dDQaLfiaMEG7dDQaLfiaMKGqha9dOpow\nRAu+JjyoGpapLXxNGKIFXxMe+AdttUtHE8ZowdeEB9qlo9FowdeECXrQVqPRgq8JE2w2SaNZUSHv\nteBrwhAt+JrwwGZmESkvl2ft0tGEIVrwNeGB1SrPfsHXFr4mDNGCrwkPtIWv0WjB14QJ2sLXaLTg\na8KEqha+FnxNGKIFXxMe+AXfX+JQu3Q0YYgWfE14UNWlowVfE4ZowdeEB8EuHas10AFoNGGEFnxN\neOAX+LIybd1rwhYt+JrwINjC1wO2mjBFC74mPNCCr9FowdeECcGDttqlowlTtOBrwgO/hb91q7bw\nNWGLFnxNeOAX/L17teBrwhYt+JrwIDgMU7t0NGGKFnxNeOC38EFb+JqwRQu+JjwItvC14GvClCMi\n+IZh3GcYhjIMI9V8bxiG8YphGJsMw1hlGEbvI3EcjeaQCbbwtUtHE6YctuAbhtESOAvYEbR4BNDe\nfNwM/9/e/cdIcdZxHH9/CvSH0gpIsciPAk0xwdRYvBKM0kQltCUK/kgMRgOpJESCxsYYRUlM/2li\nMWpiNG0wEouptjW2yh82FozRfwSkCAWklAMxbbkCbU1LUgNc+frHPNsbcO+Ovb3bmfP5vJLNzj07\ne/vZZ2e/O/vM7AwPtPs4Zm0pF/zytFlGhmMN/4fAN4AotS0HtkRhBzBB0tRheCyzobmitKj7ODqW\nqbYKvqRlwIsRse+Sm6YBz5f+fiG1mVXjwoW+6Su86cryNOh3W0nbgRua3LQB+DawpNndmrRFkzYk\nraEY9mHmzJmDxTEbmvPn+6Zd8C1Tgxb8iFjcrF3SLcBsYJ8kgOnAHkkLKNboZ5Rmnw6c6Of/bwI2\nAXR1dTX9UDBrW7nge0jHMjXkVZ2I2B8RUyJiVkTMoijy8yPiJWArsDLtrbMQeC0ieoYnstkQ9Pb2\nTXsN3zI1Ursr/B5YCnQDbwB3j9DjmF2erq6+aRd8y9SwLflpTf/lNB0RsS4iboqIWyJi93A9jtmQ\nTJ4Mq1cX0y74likv+ZaPRqF3wbdMecm3fLjgW+a85Fs+GnvnuOBbprzkWz4ahd67ZVqmXPAtHx7S\nscx5ybd8uOBb5rzkWz5c8C1zXvItHy74ljkv+ZYPF3zLnJd8y4cLvmXOS77lw7tlWuZc8C0fXsO3\nzHnJt3y44FvmvORbPhqFXs1OyGb2/88F3/LhNXvLnN8Blg8XfMuc3wGWDxd8y5zfAZYPj+Fb5lzw\nLR9ew7fM+R1g+WgU/Ihqc5hVxAXf8uFf2FrmXPAtHx7Sscz5HWD58MZay5wLvuXDY/eWORd8M7NM\nuOBbfjy0Y5lywTczy4QLvplZJlzwzcwy4YJvZpYJF3zLh3fLtMy54JuZZcIF3/Lj3TItUy74ZmaZ\ncMG3fHgM3zLngm/5OH++uB43rtocZhVxwbd8uOBb5lzwLR+9vcX12LHV5jCriAu+5cMF3zLngm/5\n8JCOZa7tgi/pK5IOSzooaWOp/VuSutNtd7T7OGZta5zT9pprqs1hVpG2vttK+giwHHhfRJyVNCW1\nzwNWAO8F3g1slzQ3It5sN7DZkK1fD+fOwdq1VScxq0S7a/hrge9GxFmAiDiV2pcDj0TE2Yj4J9AN\nLGjzsczaM348bNwIV19ddRKzSrRb8OcCiyTtlPRnSbel9mnA86X5Xkht/0PSGkm7Je0+ffp0m3HM\nzKw/gw7pSNoO3NDkpg3p/hOBhcBtwGOS5gDNDlbS9GeOEbEJ2ATQ1dXln0KamY2QQQt+RCzu7zZJ\na4HHIyKAXZIuAJMp1uhnlGadDpxoM6uZmbWh3SGd3wIfBZA0F7gSeBnYCqyQdJWk2cDNwK42H8vM\nzNrQ7i9QNgObJR0AzgGr0tr+QUmPAf8AeoF13kPHzKxabRX8iDgHfKGf2+4D7mvn/5uZ2fDxL23N\nzDLhgm9mlglFjU4KIekMcLjqHC2YTLGRejQYTVnBeUfSaMoKoytvVVlvjIjrB5upbocNPBwRXVWH\nuFySdo+WvKMpKzjvSBpNWWF05a17Vg/pmJllwgXfzCwTdSv4m6oO0KLRlHc0ZQXnHUmjKSuMrry1\nzlqrjbZmZjZy6raGb2ZmI6Q2BV/SnensWN2S1tcgzwxJf5J0KJ3N66up/V5JL0ramy5LS/ep9Cxf\nko5L2p9y7U5tkyRtk3QkXU9M7ZL0o5T3GUnzO5jzPaX+2yvpdUn31KlvJW2WdCodNqTR1nJfSlqV\n5j8iaVWH835P0rMp0xOSJqT2WZL+U+rnB0v3+UBahrrTc2p25NuRyNrya9+pmtFP3kdLWY9L2pva\nK+3bQUVE5RdgDHAUmENxALZ9wLyKM00F5qfpa4HngHnAvcDXm8w/L+W+Cpidns+YDmc+Dky+pG0j\nsD5NrwfuT9NLgScpDmW9ENhZ4Wv/EnBjnfoWuB2YDxwYal8Ck4Bj6Xpimp7YwbxLgLFp+v5S3lnl\n+S75P7uAD6bn8iRwV4eytvTad7JmNMt7ye3fB75Th74d7FKXNfwFQHdEHIvi+DyPUJw1qzIR0RMR\ne9L0GeAQ/ZzEJanrWb6WAw+l6YeAT5bat0RhBzBB0tQK8n0MOBoR/xpgno73bUT8BXi1SY5W+vIO\nYFtEvBoR/wa2AXd2Km9EPBURvenPHRSHKe9XynxdRPw1igq1hb7nOKJZB9Dfa9+xmjFQ3rSW/lng\nVwP9j0717WDqUvAv+wxZVZA0C7gV2Jmavpy+Jm9ufK2nHs8hgKckPS1pTWp7V0T0QPEhBkxJ7XXI\nC8W5j8tvlrr2LbTel3XJDfBFirXKhtmS/q7iTHWLUts0iowNnc7bymtfl75dBJyMiCOltjr2LVCf\ngn/ZZ8jqNEnjgd8A90TE68ADwE3A+4Eeiq9zUI/n8KGImA/cBayTdPsA81aeV9KVwDLg16mpzn07\nkP7y1SK3pA0Uhyl/ODX1ADMj4lbga8AvJV1HtXlbfe1r0bfA57h4haWOffuWuhT8Wp4hS9I4imL/\ncEQ8DhARJyPizYi4APyUvqGFyp9DRJxI16eAJ1K2k42hmnTdONF85XkpPpj2RMRJqHffJq32ZeW5\n04bijwOfT0MJpOGRV9L00xRj4XNT3vKwT8fyDuG1r0PfjgU+DTzaaKtj35bVpeD/DbhZ0uy01reC\n4qxZlUljcz8DDkXED0rt5XHuTwGNLfeVnuVL0tslXduYpthgdyDlauwdsgr4XSnvyrSHyULgtcZw\nRQddtHZU174tabUv/wAskTQxDVEsSW0dIelO4JvAsoh4o9R+vaQxaXoORX8eS5nPSFqYlv+Vpec4\n0llbfe3rUDMWA89GxFtDNXXs24t0eitxfxeKPR2eo/hE3FCDPB+m+Mr1DLA3XZYCvwD2p/atwNTS\nfTak/Ifp8BZ4ir0V9qXLwUYfAu8E/ggcSdeTUruAn6S8+4GuDud9G/AK8I5SW236luKDqAc4T7F2\ntnoofUkxdt6dLnd3OG83xTh3Y/l9MM37mbSM7AP2AJ8o/Z8uimJ7FPgx6ceZHcja8mvfqZrRLG9q\n/znwpUvmrbRvB7v4l7ZmZpmoy5COmZmNMBd8M7NMuOCbmWXCBd/MLBMu+GZmmXDBNzPLhAu+mVkm\nXPDNzDLxX8i86ijv2/OVAAAAAElFTkSuQmCC\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f83bbadff60>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "slip_data=pd.read_csv('TRIP1.csv')\n",
    "slip_data.waistAccelerationX.plot(kind='line')\n",
    "slip_data.waistAccelerationY.plot(kind='line')\n",
    "slip_data.waistAccelerationZ.plot(kind='line',colors='R')"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Magnetic Field Analysis (Waistometer)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 10,
   "metadata": {},
   "outputs": [
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "/home/inderpreet/anaconda3/lib/python3.6/site-packages/pandas/plotting/_core.py:179: UserWarning: 'colors' is being deprecated. Please use 'color'instead of 'colors'\n",
      "  warnings.warn((\"'colors' is being deprecated. Please use 'color'\"\n"
     ]
    },
    {
     "data": {
      "text/plain": [
       "<matplotlib.axes._subplots.AxesSubplot at 0x7f83bba5f0f0>"
      ]
     },
     "execution_count": 10,
     "metadata": {},
     "output_type": "execute_result"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAYIAAAD8CAYAAAB6paOMAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nFEVRGjiqCBRFURo4qggURVEaOP8PWQKeDyRzKNkAAAAASUVORK5CYII=\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f83bb9bb2b0>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "slip_data.waistMagneticFieldX.plot(kind='line')\n",
    "slip_data.waistMagneticFieldY.plot(kind='line')\n",
    "slip_data.waistMagneticFieldZ.plot(kind='line',colors='R')"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Angular Velocity Analysis (Waistometer)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 11,
   "metadata": {},
   "outputs": [
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "/home/inderpreet/anaconda3/lib/python3.6/site-packages/pandas/plotting/_core.py:179: UserWarning: 'colors' is being deprecated. Please use 'color'instead of 'colors'\n",
      "  warnings.warn((\"'colors' is being deprecated. Please use 'color'\"\n"
     ]
    },
    {
     "data": {
      "text/plain": [
       "<matplotlib.axes._subplots.AxesSubplot at 0x7f83bb9d2470>"
      ]
     },
     "execution_count": 11,
     "metadata": {},
     "output_type": "execute_result"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAXYAAAD8CAYAAABjAo9vAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f83bf4f4f28>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "slip_data.waistAngularVelocityX.plot(kind='line')\n",
    "slip_data.waistAngularVelocityY.plot(kind='line')\n",
    "slip_data.waistAngularVelocityZ.plot(kind='line',colors='R')"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Feature Selection\n",
    "### Remove Low Variance Features"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 12,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Number of Features in training dataset(before feature selection by Variance Threshold):- 135\n",
      "Number of Features in training dataset(after feature selection by Variance Threshold):- 129\n"
     ]
    }
   ],
   "source": [
    "#Performing Feature Selection on Training Dataset\n",
    "print(\"Number of Features in training dataset(before feature selection by Variance Threshold):-\",X_train.shape[1])\n",
    "X_train_temp = X_train.copy(deep=True)  # Make a deep copy of the Training Data dataframe\n",
    "selector = VarianceThreshold(0.12)\n",
    "selector.fit(X_train_temp)\n",
    "X_res = X_train_temp.loc[:, selector.get_support(indices=False)]\n",
    "X_train=X_res\n",
    "print(\"Number of Features in training dataset(after feature selection by Variance Threshold):-\",X_train.shape[1])"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Correlation between each feature and class variable"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 13,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "(480, 129)\n",
      "Find most important features relative to target through correlation\n"
     ]
    },
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "/home/inderpreet/anaconda3/lib/python3.6/site-packages/pandas/plotting/_core.py:179: UserWarning: 'colors' is being deprecated. Please use 'color'instead of 'colors'\n",
      "  warnings.warn((\"'colors' is being deprecated. Please use 'color'\"\n"
     ]
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAX0AAAGJCAYAAABmeuNeAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nAElFTkSuQmCC\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f83bb9cc908>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "print(X_train.shape)\n",
    "traini = pd.concat([X_train, Y_train], axis=1, join='inner')\n",
    "\n",
    "# Find most important features relative to target i.e finding correlation of every individual feature i.e independent variable with dependent variable and then sorting them and using the features that have maximum correlation\n",
    "print(\"Find most important features relative to target through correlation\")\n",
    "corr = traini.corr()\n",
    "corr.sort_values([\"class_label\"], ascending = False, inplace = True)\n",
    "\n",
    "#Selecting top-10 features\n",
    "corr.class_label[1:10].plot(kind='bar',colors='RGBY')\n",
    "top_features=corr.class_label[1:10].to_frame()"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Top 10 Features"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 14,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "['mean_lthighMagneticFieldY', 'mean_category', 'mean_waistMagneticFieldY', 'mean_sternumAccelerationX', 'mean_headAccelerationX', 'mean_sternumMagneticFieldY', 'var_lthighMagneticFieldY', 'mean_trial', 'mean_waistAccelerationX']\n"
     ]
    }
   ],
   "source": [
    "features=[]\n",
    "columns=top_features.index\n",
    "for col in columns:\n",
    "    features.append(col)\n",
    "print(features)"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Select same features in Training and Testing Dataset"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 15,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "9\n",
      "Index(['mean_lthighMagneticFieldY', 'mean_category',\n",
      "       'mean_waistMagneticFieldY', 'mean_sternumAccelerationX',\n",
      "       'mean_headAccelerationX', 'mean_sternumMagneticFieldY',\n",
      "       'var_lthighMagneticFieldY', 'mean_trial', 'mean_waistAccelerationX'],\n",
      "      dtype='object')\n",
      "9\n",
      "Index(['mean_lthighMagneticFieldY', 'mean_category',\n",
      "       'mean_waistMagneticFieldY', 'mean_sternumAccelerationX',\n",
      "       'mean_headAccelerationX', 'mean_sternumMagneticFieldY',\n",
      "       'var_lthighMagneticFieldY', 'mean_trial', 'mean_waistAccelerationX'],\n",
      "      dtype='object')\n"
     ]
    }
   ],
   "source": [
    "#Selecting Features for training dataset\n",
    "X_train=X_train[features]\n",
    "print(X_train.shape[1])\n",
    "print(X_train.columns)\n",
    "\n",
    "\n",
    "#Selecting Same Features for testing dataset\n",
    "X_test=X_test[X_train.columns]\n",
    "print(X_test.shape[1])\n",
    "print(X_test.columns)"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Applying Models and Comparing them"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 16,
   "metadata": {
    "collapsed": true
   },
   "outputs": [],
   "source": [
    "# Creating training and cross-validation dataset\n",
    "X_train,X_CV,Y_train,Y_CV=train_test_split(X_train,Y_train,test_size=0.30)\n",
    "\n",
    "\n",
    "import itertools\n",
    "def plot_confusion_matrix(cm, classes,\n",
    "                          normalize=False,\n",
    "                          title='Confusion matrix',\n",
    "                          cmap=plt.cm.Blues):\n",
    "    if normalize:\n",
    "        cm = cm.astype('float') / cm.sum(axis=1)[:, np.newaxis]\n",
    "        print(\"Normalized confusion matrix\")\n",
    "    else:\n",
    "        print('Confusion matrix, without normalization')\n",
    "\n",
    "    print(cm)\n",
    "\n",
    "    plt.imshow(cm, interpolation='nearest', cmap=cmap)\n",
    "    plt.title(title)\n",
    "    tick_marks = np.arange(len(classes))\n",
    "    plt.xticks(tick_marks, classes, rotation=45)\n",
    "    plt.yticks(tick_marks, classes)\n",
    "\n",
    "    fmt = '.2f' if normalize else 'd'\n",
    "    thresh = cm.max() / 2.\n",
    "    for i, j in itertools.product(range(cm.shape[0]), range(cm.shape[1])):\n",
    "        plt.text(j, i, format(cm[i, j], fmt),\n",
    "                 horizontalalignment=\"center\",\n",
    "                 color=\"white\" if cm[i, j] > thresh else \"black\")\n",
    "\n",
    "    #plt.tight_layout()\n",
    "    plt.ylabel('True label')\n",
    "    plt.xlabel('Predicted label')\n",
    "    \n",
    "results_sensitivity={}\n",
    "results_specitivity={}"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Logistic Regression"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 17,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Sensitivity- 96.0 Specificity 75.0\n",
      "Error Rate:\n",
      "False Positive Rate- 25.0 True Positive Rate- 4.0\n",
      "Confusion matrix, without normalization\n",
      "[[ 9  3]\n",
      " [ 1 24]]\n",
      "Normalized confusion matrix\n",
      "[[ 0.75  0.25]\n",
      " [ 0.04  0.96]]\n"
     ]
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAASUAAAEuCAYAAADIoAS0AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f83bb9815f8>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAASUAAAEuCAYAAADIoAS0AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nKJREJCgKJREJyv8DKYjRHLw9FtwAAAAASUVORK5CYII=\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f83bb8af048>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "from sklearn.metrics import roc_curve\n",
    "\n",
    "# Applying Logistic Regression\n",
    "log_reg=LogisticRegression()\n",
    "log_reg=log_reg.fit(X_train, Y_train)\n",
    "log_pred=log_reg.predict(X_CV)\n",
    "score=accuracy_score(Y_CV,log_pred)\n",
    "#print(score)\n",
    "\n",
    "tn, fp, fn, tp  = confusion_matrix(Y_CV, log_pred, labels=[0, 1]).ravel()\n",
    "sensitivity=tp/(tp+fn)\n",
    "specificity=tn/(tn+fp)\n",
    "print(\"Sensitivity-\",sensitivity*100,\"Specificity\",specificity*100)\n",
    "print(\"Error Rate:\")\n",
    "fpr=fp/(fp+tn)\n",
    "tpr=fn/(fn+tp)\n",
    "print(\"False Positive Rate-\",fpr*100,\"True Positive Rate-\",tpr*100)\n",
    "\n",
    "results_sensitivity['Logistic']=sensitivity\n",
    "results_specitivity['Logistic']=specificity\n",
    "\n",
    "cm=confusion_matrix(Y_CV,log_pred,labels=[0,1])\n",
    "classes=[\"NonFall\",\"Fall\"]\n",
    "plt.figure()\n",
    "plot_confusion_matrix(cm,classes)\n",
    "plt.figure()\n",
    "plot_confusion_matrix(cm,classes,normalize=True)\n",
    "plt.show()"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Decision Tree"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 18,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Sensitivity- 92.8571428571 Specificity 81.25\n",
      "Error Rate:\n",
      "False Positive Rate- 18.75 True Positive Rate- 7.14285714286\n",
      "Confusion matrix, without normalization\n",
      "[[13  3]\n",
      " [ 2 26]]\n",
      "Normalized confusion matrix\n",
      "[[ 0.8125      0.1875    ]\n",
      " [ 0.07142857  0.92857143]]\n"
     ]
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAASUAAAEuCAYAAADIoAS0AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nDtO9AAAAAElFTkSuQmCC\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f83bb861438>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAASUAAAEuCAYAAADIoAS0AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nMuX/ARpCr/r24j35AAAAAElFTkSuQmCC\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f83bb850b70>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "# Applying Decision Tree\n",
    "decision_reg = DecisionTreeClassifier(criterion='gini',\n",
    "                                            max_depth=10, max_leaf_nodes=23, splitter='best')\n",
    "decision_reg=decision_reg.fit(X_train, Y_train)\n",
    "decision_pred=decision_reg.predict(X_CV)\n",
    "\n",
    "tn, fp, fn, tp  = confusion_matrix(Y_CV, decision_pred, labels=[0, 1]).ravel()\n",
    "sensitivity=tp/(tp+fn)\n",
    "specificity=tn/(tn+fp)\n",
    "print(\"Sensitivity-\",sensitivity*100,\"Specificity\",specificity*100)\n",
    "print(\"Error Rate:\")\n",
    "fpr=fp/(fp+tn)\n",
    "tpr=fn/(fn+tp)\n",
    "print(\"False Positive Rate-\",fpr*100,\"True Positive Rate-\",tpr*100)\n",
    "\n",
    "results_sensitivity['DT']=sensitivity\n",
    "results_specitivity['DT']=specificity\n",
    "\n",
    "cm=confusion_matrix(Y_CV,decision_pred,labels=[0,1])\n",
    "classes=[\"NonFall\",\"Fall\"]\n",
    "plt.figure()\n",
    "plot_confusion_matrix(cm,classes)\n",
    "plt.figure()\n",
    "plot_confusion_matrix(cm,classes,normalize=True)\n",
    "plt.show()"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Gaussian Naive Bayes"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 19,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Sensitivity- 100.0 Specificity 88.0\n",
      "Error Rate:\n",
      "False Positive Rate- 12.0 True Positive Rate- 0.0\n",
      "Confusion matrix, without normalization\n",
      "[[22  3]\n",
      " [ 0 30]]\n",
      "Normalized confusion matrix\n",
      "[[ 0.88  0.12]\n",
      " [ 0.    1.  ]]\n"
     ]
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAASUAAAEuCAYAAADIoAS0AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f83bb92a908>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAASUAAAEuCAYAAADIoAS0AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nZpYUh5KZJcWhZGZJcSiZWVIcSmaWlP8H3Sqb+e3TjLQAAAAASUVORK5CYII=\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f83bb8afe10>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "# Applying Gaussian Naive Bayes\n",
    "naivebay_reg = GaussianNB()\n",
    "naivebay_reg=naivebay_reg.fit(X_train, Y_train)\n",
    "naivebay_pred=naivebay_reg.predict(X_CV)\n",
    "\n",
    "tn, fp, fn, tp  = confusion_matrix(Y_CV, naivebay_pred, labels=[0, 1]).ravel()\n",
    "sensitivity=tp/(tp+fn)\n",
    "specificity=tn/(tn+fp)\n",
    "print(\"Sensitivity-\",sensitivity*100,\"Specificity\",specificity*100)\n",
    "print(\"Error Rate:\")\n",
    "fpr=fp/(fp+tn)\n",
    "tpr=fn/(fn+tp)\n",
    "print(\"False Positive Rate-\",fpr*100,\"True Positive Rate-\",tpr*100)\n",
    "\n",
    "results_sensitivity['NB']=sensitivity\n",
    "results_specitivity['NB']=specificity\n",
    "\n",
    "cm=confusion_matrix(Y_CV,naivebay_pred,labels=[0,1])\n",
    "classes=[\"NonFall\",\"Fall\"]\n",
    "plt.figure()\n",
    "plot_confusion_matrix(cm,classes)\n",
    "plt.figure()\n",
    "plot_confusion_matrix(cm,classes,normalize=True)\n",
    "plt.show()"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Adaboost Classifier"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 20,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Sensitivity- 92.8571428571 Specificity 88.8888888889\n",
      "Error Rate\n",
      "False Positive Rate- 11.1111111111 True Positive Rate- 7.14285714286\n",
      "Confusion matrix, without normalization\n",
      "[[16  2]\n",
      " [ 2 26]]\n",
      "Normalized confusion matrix\n",
      "[[ 0.88888889  0.11111111]\n",
      " [ 0.07142857  0.92857143]]\n"
     ]
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAASUAAAEuCAYAAADIoAS0AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz\nAAALEgAACxIB0t1+/AAAADl0RVh0U29mdHdhcmUAbWF0cGxvdGxpYiB2ZXJzaW9uIDIuMS4wLCBo\ndHRwOi8vbWF0cGxvdGxpYi5vcmcvpW3flQAAGbpJREFUeJzt3Xm4VXW9x/H3B44iyKRMQoYoyhQq\ngoqhKZl6syyHckDSqyKGPSZJ2TX1lkMlOaWm3pxyzKEeh2uOqYUpTqHiGOpV4KICgiMgMn7vH2sd\n3XIPh33g7LN+5+zP63n2w9prrb3Wd7u3n/P7/dawFRGYmaWiVdEFmJmVciiZWVIcSmaWFIeSmSXF\noWRmSXEomVlSHErWaCS1lfQXSR9K+vM6bGe0pL82Zm1FkfQVSa8UXUdzIp+nVH0kHQpMAAYAC4Cp\nwK8i4tF13O5hwA+BERGxfJ0LTZykALaKiP8pupaWxC2lKiNpAnAB8GugB9AbuBTYtxE2vxnwajUE\nUjkk1RRdQ7MUEX5UyQPoBCwEDqxnnTZkofV2/rgAaJMvGwm8CfwYeAeYDRyZLzsdWAosy/cxBjgN\nuKFk232AAGry50cAb5C11qYDo0vmP1ryuhHAP4EP839HlCybBJwJTM6381eg62reW239Py2pfz/g\nG8CrwHvAySXr7wg8DnyQr3sxsH6+7B/5e1mUv9+DS7b/H8Ac4Praeflr+ub7GJo/7wXMB0YW/d1I\n6VF4AX404YcNXweW14bCatY5A3gC6A50Ax4DzsyXjcxffwawXv4/88fARvnyVUNotaEEbAh8BPTP\nl/UEvpRPfxpKwMbA+8Bh+etG5c+75MsnAa8D/YC2+fOJq3lvtfX/PK9/LDAPuBHoAHwJ+ATYIl9/\nGLBTvt8+wL+AH5VsL4At69j+b8jCvW1pKOXrjM230w64Hzi36O9Fag9336pLF2B+1N+9Gg2cERHv\nRMQ8shbQYSXLl+XLl0XEPWSthP5rWc9KYLCkthExOyJeqmOdbwKvRcT1EbE8Im4CpgHfKlnn6oh4\nNSIWA38ChtSzz2Vk42fLgJuBrsCFEbEg3/9LwDYAEfF0RDyR73cGcBmwWxnv6RcRsSSv53Mi4grg\nNeBJsiA+ZQ3bqzoOperyLtB1DWMdvYCZJc9n5vM+3cYqofYx0L6hhUTEIrIuzzhgtqS7JQ0oo57a\nmr5Q8nxOA+p5NyJW5NO1oTG3ZPni2tdL6ifpLklzJH1ENg7XtZ5tA8yLiE/WsM4VwGDgdxGxZA3r\nVh2HUnV5nKx7sl8967xNNmBdq3c+b20sIuum1NqkdGFE3B8Re5K1GKaR/c+6pnpqa3prLWtqiP8i\nq2uriOgInAxoDa+p93C2pPZk43RXAadJ2rgxCm1JHEpVJCI+JBtPuUTSfpLaSVpP0t6Szs5Xuwk4\nVVI3SV3z9W9Yy11OBXaV1FtSJ+BntQsk9ZD0bUkbAkvIuoEr6tjGPUA/SYdKqpF0MDAIuGsta2qI\nDmTjXgvzVtyxqyyfC2zRwG1eCDwdEUcDdwO/X+cqWxiHUpWJiPPJzlE6lWyQdxZwHHBHvsovgSnA\n88ALwDP5vLXZ1wPALfm2nubzQdKK7Cje22RHpHYDflDHNt4F9snXfZfsyNk+ETF/bWpqoJ8Ah5Id\n1buC7L2UOg24VtIHkg5a08Yk7Ut2sGFcPmsCMFTS6EaruAXwyZNmlhS3lMwsKQ4lM0uKQ8nMkuJQ\nMrOkOJTMLCm+ijnXpkPnaNul15pXtGT07dJuzStZMmbOnMH8+fPXdPKpQ6lW2y69GHnqdUWXYQ1w\n8xHbF12CNcDOw8v7vNx9M7OkOJTMLCkOJTNLikPJzJLiUDKzpDiUzCwpDiUzS4pDycyS4lAys6Q4\nlMwsKQ4lM0uKQ8nMkuJQMrOkOJTMLCkOJTNLikPJzJLiUDKzpDiUzCwpDiUzS4pDycyS4lAys6Q4\nlMwsKQ4lM0uKQ8nMkuJQMrOkOJTMLCkOJTNLikPJzJLiUDKzpDiUzCwpDiUzS4pDycyS4lAys6Q4\nlMwsKQ4lM0uKQ8nMkuJQMrOkOJTMLCkOJTNLikPJzJLiUDKzpDiUzCwpDiUzS4pDycyS4lAys6TU\nFF2ANZ7jvtKH7Xt34sPFyxl/20ufzv/moO58Y1B3VkTw9KwPufapNwus0uoya9Ysjj7ycObOnUOr\nVq04aswxHHf8+KLLKoRDqQX522vzuefldxi/2+afzhvcswM7btaZ8be9xPKVQacN/JGnqKamholn\nn8d2Q4eyYMECRgwfxtf22JOBgwYVXVqTc/etBXl5zkIWLln+uXl7D+zGrc/NZvnKAODDT5bX9VIr\nWM+ePdlu6FAAOnTowIABA3n77bcKrqoY/rPZwvXqtAGDNunA97b/AktXBNc8OYv/mf9x0WVZPWbO\nmMHUqc+yw47Diy6lEBVrKUkKSeeVPP+JpNPWclt9JC2WNLXksX4964+UdFc+fYSki9dmvy1BK4n2\nbVrz0zunce1Tb3Li1/oWXZLVY+HChYw66Ducc94FdOzYsehyClHJ7tsS4ABJXRtpe69HxJCSx9JG\n2m6L9u6ipTwx4wMAXpu3iIigo8eVkrRs2TJGHfQdDh41mv32P6DocgpTyVBaDlwOnLDqAkmbSXpI\n0vP5v73z+ddIukjSY5LekPTd+nYgacd83Wfzf/tX5q00X0/O/ICte3YAoFfHNtS0asVHHldKTkQw\nbuwY+g8YyPgTJhRdTqEqPdB9CTBaUqdV5l8MXBcR2wB/BC4qWdYT2AXYB5hYMr9vSdftknzeNGDX\niNgO+Dnw64YUJ+kYSVMkTVm64P2GvDRJE766ORO/PYAvdG7DlaO2YY9+XXno1fn06NiGCw/4Ej/e\nfQsufHh60WVaHR6bPJkb/3g9D//9bwwfNoThw4Zw3733FF1WISrajo+IjyRdBxwPLC5Z9GWgtn16\nPXB2ybI7ImIl8LKkHiXzX4+IIavsohNwraStgADWa2B9l5O15ujcZ1A05LUpOv/vdQfOBZMcRKnb\neZddWLys2X8FG0VTnBJwATAG2LCedUo/jSUl01rDts8E/h4Rg4FvARusVYVmloyKh1JEvAf8iSyY\naj0GHJJPjwYeXcvNdwJqT+Y4Yi23YWYJaaqTJ88DSo/CHQ8cKel54DBgbc+nPxs4S9JkoPW6lWhm\nKajYmFJEtC+Zngu0K3k+A9i9jtccUdc28vUH17H+40C/kln/mc+fBEzKp68Brlmb92BmTc+XmZhZ\nUhxKZpYUh5KZJcWhZGZJcSiZWVIcSmaWFIeSmSXFoWRmSXEomVlSHEpmlhSHkpklxaFkZklxKJlZ\nUhxKZpYUh5KZJcWhZGZJcSiZWVIcSmaWFIeSmSXFoWRmSXEomVlSHEpmlhSHkpklxaFkZklxKJlZ\nUlb7C7mSOtb3woj4qPHLMbNqV9/Pdr8EBKCSebXPA+hdwbrMrEqtNpQi4otNWYiZGZQ5piTpEEkn\n59ObShpW2bLMrFqtMZQkXQx8FTgsn/Ux8PtKFmVm1au+MaVaIyJiqKRnASLiPUnrV7guM6tS5XTf\nlklqRTa4jaQuwMqKVmVmVaucULoEuBXoJul04FHgNxWtysyq1hq7bxFxnaSngT3yWQdGxIuVLcvM\nqlU5Y0oArYFlZF04nwVuZhVTztG3U4CbgF7ApsCNkn5W6cLMrDqV01L6HjAsIj4GkPQr4GngrEoW\nZmbVqZyu2Ew+H141wBuVKcfMql19F+T+lmwM6WPgJUn358/3IjsCZ2bW6OrrvtUeYXsJuLtk/hOV\nK8fMql19F+Re1ZSFmJlBGQPdkvoCvwIGARvUzo+IfhWsy8yqVDkD3dcAV5PdR2lv4E/AzRWsycyq\nWDmh1C4i7geIiNcj4lSyuwaYmTW6cs5TWiJJwOuSxgFvAd0rW5aZVatyQukEoD1wPNnYUifgqEoW\nZWbVq5wLcp/MJxfw2Y3ezMwqor6TJ28nv4dSXSLigIpUZGZVrb6W0sVNVkUC+nZpx81HbF90GdYA\nG+1wXNElWAMseeV/y1qvvpMnH2q0aszMyuR7I5lZUhxKZpaUskNJUptKFmJmBuXdeXJHSS8Ar+XP\nt5X0u4pXZmZVqZyW0kXAPsC7ABHxHL7MxMwqpJxQahURM1eZt6ISxZiZlXOZySxJOwIhqTXwQ+DV\nypZlZtWqnJbSscAEoDcwF9gpn2dm1ujKufbtHeCQJqjFzKysO09eQR3XwEXEMRWpyMyqWjljSg+W\nTG8A7A/Mqkw5Zlbtyum+3VL6XNL1wAMVq8jMqtraXGayObBZYxdiZgbljSm9z2djSq2A94CTKlmU\nmVWvekMpvzf3tmT35QZYGRGrvfGbmdm6qrf7lgfQ7RGxIn84kMysosoZU3pK0tCKV2JmRv336K6J\niOXALsBYSa8Di8h+lDIiwkFlZo2uvjGlp4ChwH5NVIuZWb2hJMh+FbeJajEzqzeUukmasLqFEXF+\nBeoxsypXXyi1JvtlXDVRLWZm9YbS7Ig4o8kqMTOj/lMC3EIysyZXXyh9rcmqMDPLrTaUIuK9pizE\nzAz8Y5RmlhiHkpklxaFkZklxKJlZUhxKZpYUh5KZJcWhZGZJcSiZWVIcSmaWFIeSmSXFoWRmSXEo\nmVlSHEpmlhSHkpklxaFkZklxKJlZUhxKZpYUh5KZJcWhZGZJqe8nlqwZmzVrFkcfeThz586hVatW\nHDXmGI47fnzRZVmJTXt05sozD6dHl46sjOAPt07mkpsmAXDsIbsx7uBdWb5iJfc98iKnXPjfxRbb\nhBxKLVRNTQ0Tzz6P7YYOZcGCBYwYPoyv7bEnAwcNKro0yy1fsZKTzr+NqdPepH27Njx243/w0JPT\n6L5xB/YZuTU7HHQWS5ctp9tG7YsutUk5lFqonj170rNnTwA6dOjAgAEDefvttxxKCZkz/yPmzP8I\ngIUfL2Ha9Dn06taZow4YwblXP8DSZcsBmPf+wiLLbHIeU6oCM2fMYOrUZ9lhx+FFl2Kr0bvnxgzp\nvyn/fHEGW27WnZ2368s/rvsJf71yPMMG9S66vCbVbEJJ0gpJU0sefepZt4+kF/PpkZLuaqo6U7Nw\n4UJGHfQdzjnvAjp27Fh0OVaHDduuz03nHs2J597KgkWfUNO6FRt1bMeuh5/Lyb+9gxvOPqroEptU\nc+q+LY6IIUUX0ZwsW7aMUQd9h4NHjWa//Q8ouhyrQ01NK246dyy33DuF//7bcwC8NfcD7ngom57y\n0kxWrgy6btSe+VXSjWs2LaW65C2iRyQ9kz9GFF1TKiKCcWPH0H/AQMafMKHocmw1fv+L0bwyfQ4X\n3fC3T+f9ZdLzjNyxHwBb9u7O+uvVVE0gQfNqKbWVNDWfnh4R+wPvAHtGxCeStgJuArYvrMKEPDZ5\nMjf+8XoGD96a4cOyBubpv/w1X9/7GwVXZrVGDNmC0fsM54VX3+KJm08C4BcX38m1dzzOZaeNZsqf\nT2bpshUc/fPrC660aTWnUKqr+7YecLGkIcAKoF9DNijpGOAYgC/2blmDiTvvsguLl0XRZVg9Hpv6\nBm23O67OZUedel0TV5OOZt19A04A5gLbkrWQ1m/IiyPi8ojYPiK279a1WyXqM7MGau6h1AmYHREr\ngcOA1gXXY2brqLmH0qXAv0t6gqzrtqjgesxsHTWbMaWI+H/n2kfEa8A2JbN+ls+fAQzOpycBkype\noJk1iubeUjKzFsahZGZJcSiZWVIcSmaWFIeSmSXFoWRmSXEomVlSHEpmlhSHkpklxaFkZklxKJlZ\nUhxKZpYUh5KZJcWhZGZJcSiZWVIcSmaWFIeSmSXFoWRmSXEomVlSHEpmlhSHkpklxaFkZklxKJlZ\nUhxKZpYUh5KZJcWhZGZJcSiZWVIcSmaWFIeSmSXFoWRmSXEomVlSHEpmlhSHkpklxaFkZklxKJlZ\nUhxKZpYUh5KZJcWhZGZJcSiZWVIcSmaWFIeSmSXFoWRmSXEomVlSHEpmlhSHkpklxaFkZklxKJlZ\nUhxKZpYUh5KZJUURUXQNSZA0D5hZdB0V0BWYX3QR1iAt9TPbLCK6rWklh1ILJ2lKRGxfdB1Wvmr/\nzNx9M7OkOJTMLCkOpZbv8qILsAar6s/MY0pmlhS3lMwsKQ4lM0uKQ8nMkuJQqnKSviTpq0XXYZ8n\naYikAUXXUQSHUhWT1ArYGxgjadei67GMJAH7AhdK6l90PU3NoVSlJG0H9AUuA6YAh0kaWWhRhqRh\nwAbAROBhYGK1tZgcSlVI0nrAXsAlQA/gSmAaMNrBVJy8hXQMcD8g4DzgGeCsagomh1IViohlwLVk\nX/5zgZ5kLaZpwKGSdiuwvKoV2UmD44HngdvJgulsPgumqujKOZSqSP6XGICImANcBzwJnMNnwfQy\nME7SLoUUWYVW+Vw+ASYAb/L5YPoncKmkrQopsgk5lKqEJOV/iZE0TNJmwAKyLsJTZMG0CXAV8Cjw\nelG1VhNJrUo+l36SNo+IpRExFniLz4LpPOA+YHFx1TYNX2ZSZSQdBxwGTAK2Ag4HPgZOBL4OjAGm\nh78YTUrSeOC7ZEG0MCKOzudfBmwN7J63olo8t5RaOEl9Sqb3BQ4B9iD77LcBHgA2JPtL/BdgqQOp\n8iRtUjI9GjgQ2BOYDhwh6S8AEfF9sqOj3YuoswgOpRZM0t7AQ5K+KKmG7M6aBwKjgG2BAWRduL8D\nG0TE+RHxZmEFVwlJ3wTulFR7F8ZXyD6XMcBAslMCti0JpuMj4n8LKbYADqUWKv/i/wz4fkTMIuuq\nTwXmkHUHfhMRy4HJwGygS2HFVhFJXwdOAn4eEfMk1UTEFOA9YCfgd/nncj3QX1KvAssthEOpBcq/\nyLcBd0XEg3kX7or83/Xyx66STga+DBwVES3x/uRJkbQxcA9wXkTcJ6kvcJWkLkCQ/cHYKf9c+gC7\nRMTbhRVcEIdSC5R/kX8I7CvpYOBq4OmImBERS4FLyY7oDAR+GhHziqu2ekTEe8C3gJ9L2obsZm7P\nRsS7+efyQL7qLsDEiHinoFIL5aNvLUjpYf/8+VHA74BrI+IH+fkwNfnJk7WHo1cWVG7Vyrtw9wAn\nR8TEvAu3vGT5erWfUTVyS6mFWOU8pPb5F/sPZGcI7yRp13z5itqT9RxIxYiI+4B/IzvK1ikilkta\nv2R51QYSuKXUIqwSSD8ha/5vABwZEbMljQWOJeuqPVhgqVYiPzp6AfDlvGtnQE3RBdi6Kwmk3YF9\ngHHA0cCTkoZHxBWSNgBOkzQZ+MTnIhUvIu7NW0gPSto+m+XPxS2lFiK/uv94soHTM/N5Z5OdJfyV\niHhLUueI+KDAMq0OktpHxMKi60iFx5SaqdKLOHPTgXnAQEnbAkTET4F7gfsltQY+bNoqrRwOpM9z\nS6kZWmUM6VvAcuAD4GmyMYr3gD9HxHP5Ot2r9fCyNT9uKTVjkn4AnEE2sP0H4EfACUBn4HBJg/NV\nfR6SNRsOpWZEUm9JG0ZESOpOdr3UoRFxCjAC+D7ZGNKvgNZkZwjjwVNrThxKzYSkHsCPgWPzgdF3\ngPnAUoCIeJ+slbRNRMwGToyI+YUVbLaWHErNxzyyuw/2Ao7MB7rfAG7O7wAAsBmwaT6ovbzuzZil\nzQPdictvf9oqIl7Jg2gfsp9FmhoRl0v6L7LbkDwPDAdGR8TLxVVstm4cSgnLrx6fR9ZNOx1YQXYR\n56HAlsDsiLhM0nCgLTAzIqYXVa9ZY/AZ3QmLiHcl7QE8SNbV3ha4BVhINpa0dd56ujoilhRXqVnj\ncUupGZC0J3ARWSj1AHYnu63tjmQ3aNs5InxipLUIDqVmIr+T5G+BnSLiPUkbkd2srV1EzCi0OLNG\n5O5bMxERd0taCTwh6csR8W7RNZlVgkOpGVnlqvJhvh+StUTuvjVDvqrcWjKHkpklxWd0m1lSHEpm\nlhSHkpklxaFkZZG0QtJUSS9K+rOkduuwrZGS7sqnvy3ppHrW7ZzfN6qh+zgt/xGFsuavss41kr7b\ngH31kfRiQ2u0ujmUrFyLI2JIRAwmu8RlXOlCZRr8fYqIOyNiYj2rdAYaHErWfDmUbG08AmyZtxD+\nJelS4Bngi5L2kvS4pGfyFlV7yH6AUdI0SY8CB9RuSNIRki7Op3tIul3Sc/ljBDAR6Ju30s7J1ztR\n0j8lPS/p9JJtnSLpFUkPAv3X9CYkjc2385ykW1dp/e0h6RFJr0raJ1+/taRzSvb9/XX9D2n/n0PJ\nGiS/d9PewAv5rP7AdRGxHbAIOBXYIyKGAlOACfnPO11B9pPVXwE2Wc3mLwIejohtgaHAS8BJwOt5\nK+1ESXsBW5Fd9zcEGCZpV0nDyK4H3I4s9HYo4+3cFhE75Pv7FzCmZFkfYDfgm8Dv8/cwBvgwInbI\ntz9W0uZl7McawGd0W7naSpqaTz8CXEV2w7mZEfFEPn8nYBAwOf+xlfWBx4EBwPSIeA1A0g3AMXXs\nY3fgcICIWAF8mF/jV2qv/PFs/rw9WUh1AG6PiI/zfdxZxnsaLOmXZF3E9sD9Jcv+lJ8x/5qkN/L3\nsBewTcl4U6d836+WsS8rk0PJyrU4IoaUzsiDZ1HpLOCBiBi1ynpDgMY6S1fAWRFx2Sr7+NFa7OMa\nYL+IeE7SEcDIkmWrbivyff8wIkrDC0l9Grhfq4e7b9aYngB2lrQlgKR2kvoB04DNJfXN1xu1mtc/\nRPbz4rXjNx2BBWStoFr3A0eVjFV9If8RhX8A+0tqK6kDWVdxTToAsyWtB4xeZdmBklrlNW8BvJLv\n+9h8fST1k7RhGfuxBnBLyRpNRMzLWxw3SWqTzz41Il6VdAxwt6T5wKPA4Do2MR64XNIYsrtsHhsR\nj0uanB9yvzcfVxoIPJ631BYC34uIZyTdAkwFZpJ1MdfkP4En8/Vf4PPh9wrwMNn9q8ZFxCeSriQb\na3omv7nePGC/8v7rWLl87ZuZJcXdNzNLikPJzJLiUDKzpDiUzCwpDiUzS4pDycyS4lAys6Q4lMws\nKf8HdtRhhxKmcqsAAAAASUVORK5CYII=\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f83b46140b8>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAASUAAAEuCAYAAADIoAS0AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nSUVORK5CYII=\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f83b458e550>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "# Applying AdaBoost Classifier\n",
    "ada_reg = AdaBoostClassifier(random_state=2, n_estimators=500)\n",
    "ada_reg=ada_reg.fit(X_train, Y_train)\n",
    "ada_pred=ada_reg.predict(X_CV)\n",
    "\n",
    "tn, fp, fn, tp  = confusion_matrix(Y_CV, ada_pred, labels=[0, 1]).ravel()\n",
    "sensitivity=tp/(tp+fn)\n",
    "specificity=tn/(tn+fp)\n",
    "print(\"Sensitivity-\",sensitivity*100,\"Specificity\",specificity*100)\n",
    "print(\"Error Rate\")\n",
    "fpr=fp/(fp+tn)\n",
    "tpr=fn/(fn+tp)\n",
    "print(\"False Positive Rate-\",fpr*100,\"True Positive Rate-\",tpr*100)\n",
    "\n",
    "results_sensitivity['Adaboost']=sensitivity\n",
    "results_specitivity['Adaboost']=specificity\n",
    "\n",
    "cm=confusion_matrix(Y_CV,ada_pred,labels=[0,1])\n",
    "classes=[\"NonFall\",\"Fall\"]\n",
    "plt.figure()\n",
    "plot_confusion_matrix(cm,classes)\n",
    "plt.figure()\n",
    "plot_confusion_matrix(cm,classes,normalize=True)\n",
    "plt.show()"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "\n",
    "# Gradient Boosting Classifier"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 21,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Sensitivity- 100.0 Specificity 91.3043478261\n",
      "Error Rate:\n",
      "False Positive Rate- 8.69565217391 True Positive Rate- 0.0\n",
      "Confusion matrix, without normalization\n",
      "[[21  2]\n",
      " [ 0 29]]\n",
      "Normalized confusion matrix\n",
      "[[ 0.91304348  0.08695652]\n",
      " [ 0.          1.        ]]\n"
     ]
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAASUAAAEuCAYAAADIoAS0AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nSXEomVlSHEpmlpT/A0beXOCHZZ/EAAAAAElFTkSuQmCC\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f83b4566400>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAASUAAAEuCAYAAADIoAS0AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nSUVORK5CYII=\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f83b4499400>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "# Applying Gradient Boosting Classifier\n",
    "params = {'n_estimators': 500, 'max_depth': 4, 'min_samples_split': 2, 'learning_rate': 0.01}\n",
    "gb_reg = ensemble.GradientBoostingClassifier(**params)\n",
    "gb_reg=gb_reg.fit(X_train, Y_train)\n",
    "gb_pred=gb_reg.predict(X_CV)\n",
    "\n",
    "tn, fp, fn, tp  = confusion_matrix(Y_CV, gb_pred, labels=[0, 1]).ravel()\n",
    "sensitivity=tp/(tp+fn)\n",
    "specificity=tn/(tn+fp)\n",
    "print(\"Sensitivity-\",sensitivity*100,\"Specificity\",specificity*100)\n",
    "print(\"Error Rate:\")\n",
    "fpr=fp/(fp+tn)\n",
    "tpr=fn/(fn+tp)\n",
    "print(\"False Positive Rate-\",fpr*100,\"True Positive Rate-\",tpr*100)\n",
    "\n",
    "results_sensitivity['GBR']=sensitivity\n",
    "results_specitivity['GBR']=specificity\n",
    "\n",
    "cm=confusion_matrix(Y_CV,gb_pred,labels=[0,1])\n",
    "classes=[\"NonFall\",\"Fall\"]\n",
    "plt.figure()\n",
    "plot_confusion_matrix(cm,classes)\n",
    "plt.figure()\n",
    "plot_confusion_matrix(cm,classes,normalize=True)\n",
    "plt.show()"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Random Forest Classifier"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 22,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Sensitivity- 100.0 Specificity 88.4615384615\n",
      "Error Rate:\n",
      "False Positive Rate- 11.5384615385 True Positive Rate- 0.0\n",
      "Confusion matrix, without normalization\n",
      "[[23  3]\n",
      " [ 0 28]]\n",
      "Normalized confusion matrix\n",
      "[[ 0.88461538  0.11538462]\n",
      " [ 0.          1.        ]]\n"
     ]
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAASUAAAEuCAYAAADIoAS0AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f83b4455c18>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAASUAAAEuCAYAAADIoAS0AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nJcWhZGZJcSiZWVL+H34VnGFSdMQmAAAAAElFTkSuQmCC\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f83b44b8b00>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "# Applying Random Forest Classifier\n",
    "rf_reg = RandomForestClassifier(random_state=1)\n",
    "rf_reg=rf_reg.fit(X_train, Y_train)\n",
    "rf_pred=rf_reg.predict(X_CV)\n",
    "\n",
    "tn, fp, fn, tp  = confusion_matrix(Y_CV, rf_pred, labels=[0, 1]).ravel()\n",
    "sensitivity=tp/(tp+fn)\n",
    "specificity=tn/(tn+fp)\n",
    "print(\"Sensitivity-\",sensitivity*100,\"Specificity\",specificity*100)\n",
    "print(\"Error Rate:\")\n",
    "fpr=fp/(fp+tn)\n",
    "tpr=fn/(fn+tp)\n",
    "print(\"False Positive Rate-\",fpr*100,\"True Positive Rate-\",tpr*100)\n",
    "\n",
    "results_sensitivity['RForest']=sensitivity\n",
    "results_specitivity['RForest']=specificity\n",
    "\n",
    "cm=confusion_matrix(Y_CV,rf_pred,labels=[0,1])\n",
    "classes=[\"NonFall\",\"Fall\"]\n",
    "plt.figure()\n",
    "plot_confusion_matrix(cm,classes)\n",
    "plt.figure()\n",
    "plot_confusion_matrix(cm,classes,normalize=True)\n",
    "plt.show()"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Majority Voting"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 23,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Sensitivity- 96.6666666667 Specificity 86.9565217391\n",
      "Error Rate:\n",
      "False Positive Rate- 13.0434782609 True Positive Rate- 3.33333333333\n",
      "Confusion matrix, without normalization\n",
      "[[20  3]\n",
      " [ 1 29]]\n",
      "Normalized confusion matrix\n",
      "[[ 0.86956522  0.13043478]\n",
      " [ 0.03333333  0.96666667]]\n"
     ]
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAASUAAAEuCAYAAADIoAS0AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nRK5CYII=\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f83bb84e630>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAASUAAAEuCAYAAADIoAS0AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\niUhQ/h8To7sxTiOPUAAAAABJRU5ErkJggg==\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f83b440eac8>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "#Applying Majority Voting Concept\n",
    "majority_class = VotingClassifier(estimators=[('dr', decision_reg),\n",
    "                                    ('gnb', gb_reg),('naive_bayes',naivebay_reg)],\n",
    "                                    voting='hard')\n",
    "majority_class = majority_class.fit(X_train, Y_train)\n",
    "majority_pred=majority_class.predict(X_CV)\n",
    "\n",
    "tn, fp, fn, tp  = confusion_matrix(Y_CV, majority_pred, labels=[0, 1]).ravel()\n",
    "sensitivity=tp/(tp+fn)\n",
    "specificity=tn/(tn+fp)\n",
    "print(\"Sensitivity-\",sensitivity*100,\"Specificity\",specificity*100)\n",
    "print(\"Error Rate:\")\n",
    "fpr=fp/(fp+tn)\n",
    "tpr=fn/(fn+tp)\n",
    "print(\"False Positive Rate-\",fpr*100,\"True Positive Rate-\",tpr*100)\n",
    "\n",
    "results_sensitivity['MVoting']=sensitivity\n",
    "results_specitivity['MVoting']=specificity\n",
    "\n",
    "cm=confusion_matrix(Y_CV,majority_pred,labels=[0,1])\n",
    "classes=[\"NonFall\",\"Fall\"]\n",
    "plt.figure()\n",
    "plot_confusion_matrix(cm,classes)\n",
    "plt.figure()\n",
    "plot_confusion_matrix(cm,classes,normalize=True)\n",
    "plt.show()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 24,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAXcAAAD8CAYAAACMwORRAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nAUp2FT1He+pAAAAAAElFTkSuQmCC\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f83b45f3b70>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "plt.bar(range(len(results_sensitivity)), list(results_sensitivity.values()),color='RGBYC',width=0.3)\n",
    "plt.xticks(range(len(results_sensitivity)), list(results_sensitivity.keys()))\n",
    "plt.show()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 25,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAXcAAAD8CAYAAACMwORRAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nRK5CYII=\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f83b463bfd0>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "plt.bar(range(len(results_specitivity)), list(results_specitivity.values()),color='RGBYC',width=0.3)\n",
    "plt.xticks(range(len(results_specitivity)), list(results_specitivity.keys()))\n",
    "plt.show()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {
    "collapsed": true
   },
   "outputs": [],
   "source": []
  }
 ],
 "metadata": {
  "kernelspec": {
   "display_name": "Python 3",
   "language": "python",
   "name": "python3"
  },
  "language_info": {
   "codemirror_mode": {
    "name": "ipython",
    "version": 3
   },
   "file_extension": ".py",
   "mimetype": "text/x-python",
   "name": "python",
   "nbconvert_exporter": "python",
   "pygments_lexer": "ipython3",
   "version": "3.6.3"
  }
 },
 "nbformat": 4,
 "nbformat_minor": 2
}
